80 results on '"G., D'Addio"'
Search Results
2. Study of Gait and Posture Kinematic Indices for the Evaluation of Ankle-Foot Orthoses *
- Author
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F. Amitrano, A. Coccia, G. Pagano, L. Dileo, E. Losavio, G. Tombolini, and G. D’Addio
- Subjects
Rehabilitation ,Biophysics ,Orthopedics and Sports Medicine - Published
- 2022
- Full Text
- View/download PDF
3. Kinematic analysis of ankle joint during gait in drop foot patients wearing passive Ankle-Foot Orthosis *
- Author
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A. Coccia, F. Amitrano, G. Pagano, L. Dileo, V. Marsico, G. Tombolini, and G. D'Addio
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Rehabilitation ,Biophysics ,Orthopedics and Sports Medicine - Published
- 2022
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4. E-Textile smart socks for gait analysis: a preliminary validation study
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F. Amitrano, M. Macagno, S. Rossotti, D. Viganò, M. Cesarelli, and G. D'Addio
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Rehabilitation ,Biophysics ,Orthopedics and Sports Medicine - Published
- 2022
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5. Study of Agreement between two Wereable Inertial Systems for Gait Analysis based on a different sensor placement: G-Walk System and Opal System
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Mario Cesarelli, Leandro Donisi, G. D’Addio, Gaetano Pagano, Armando Coccia, Donisi, L., D’Addio, G., Pagano, G., Coccia, A., and Cesarelli, M.
- Subjects
Computer science ,Gait analysis ,Rehabilitation ,Biophysics ,Orthopedics and Sports Medicine ,Simulation ,Inertial systems - Published
- 2019
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6. Microvascular Blood Flow Improvement in Hyperglycemic Obese Adult Patients by Hypocaloric Diet
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T, Mastantuono, M, Di Maro, M, Chiurazzi, L, Battiloro, N, Starita, G, Nasti, D, Lapi, L, Iuppariello, M, Cesarelli, G, D'Addio, and A, Colantuoni
- Subjects
obesity ,microvascular blood flow ,laser Doppler perfusion monitoring ,Articles ,hyperglycemia ,hypocaloric diet - Abstract
The present study was aimed to assess the changes in skin microvascular blood flow (SBF) in newly diagnosed hyperglycemic obese subjects, administered with hypocaloric diet. Adult patients were recruited and divided in three groups: NW group (n=54), NG (n=54) and HG (n=54) groups were constituted by normal weight, normoglycemic and hyperglycemic obese subjects, respectively. SBF was measured by laser Doppler perfusion monitoring technique and oscillations in blood flow were analyzed by spectral methods under baseline conditions, at 3 and 6 months of dietary treatment. Under resting conditions, SBF was lower in HG group than in NG and NW ones. Moreover, all subjects showed blood flow oscillations with several frequency components. In particular, hyperglycemic obese patients revealed lower spectral density in myogenic-related component than normoglycemic obese and normal weight ones. Moreover, post-occlusive reactive hyperemia (PORH) was impaired in hyperglycemic obese compared to normoglycemic and normal weigh subjects. After hypocaloric diet, in hyperglycemic obese patients there was an improvement in SBF accompanied by recovery in myogenic-related oscillations and arteriolar responses during PORH. In conclusion, hyperglycemia markedly affected peripheral microvascular function; hypocaloric diet ameliorated tissue blood flow.
- Published
- 2016
7. Fractal behaviour of Heart Rate Variability reflects severity in stroke patients
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G. D'ADDIO, G. CORBI, G. RUSSO, N. FERRARA, M. C. MAZZOLENI, T. PRINCI, ACCARDO, AGOSTINO, AA. VV., Klaus-Peter Adlassnig, Bernd Blobel, John Mantas, G., D'Addio, G., Corbi, Accardo, Agostino, G., Russo, N., Ferrara, M. C., Mazzoleni, Princi, Tanja, D'Addio, G., Corbi, G., Accardo, A., Russo, G., Ferrara, Nicola, Mazzoleni, M. C., Princi, T., and T., Princi
- Subjects
Stroke ,Beta exponent ,Fractal dimension ,Higuchi's algorithm ,HRV ,stroke patient ,stroke patients ,fractal analysis - Abstract
Non-linear parameters obtained from heart rate variability (HRV) analysis has recently been recognized to provide valuable information for physiological interpretation of heart rate fluctuation. Among the numerous non-linear parameters related to the fractal behaviour of the HRV signal, two classes have gained wide interest in the last years: the beta exponent based on the 1/f-like relationship, starting from the spectral power, and that based on fractal dimension. In order to evaluate the relationship between lesion's severity and fractal behaviour, 20 first-ever stroke subjects and 10 healthy subjects were studied. Patients were divided in two groups according to single or multiple medium cerebral artery lesions. All subjects underwent 24-hour Holter recording analysed by fractal and 1/f-like techniques. Differently from methods usually used in literature to evaluate the fractal dimension (FD), in this work the FD was extracted by using the Higuchi's algorithm that permits to calculate the parameter directly from the HRV sequences in the time domain. Results show that fractal analysis contains relevant information related to different HRV dynamics that permits to separate normal subjects from stroke patients. FD is also able to distinguish between normal and stroke subjects with different lesion's severity.
- Published
- 2009
8. Twenty-four-hour fractal dimension analysis of heart rate variability in NOLTISALIS database
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G. D’Addio, G.D. Pinna, R. Maestri, F. Rengo, ACCARDO, AGOSTINO, M.Bracale, G., D’Addio, Accardo, Agostino, Pinna, G. D., R., Maestri, and F., Rengo
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fractal dimension ,NOLTISALIS ,HRV - Published
- 2004
9. EMG patterns of upper arm muscles during robotic rehabilitation
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L. Iuppariello, G. D’Addio, N. Pappone, B. Lanzillo, P. Bifulco, M. Romano, M. Cesarelli, Iuppariello, L., D’Addio, G., Pappone, N., Lanzillo, B., Bifulco, P., Romano, M., and Cesarelli, M.
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- 2014
10. MInD: moving in the dark
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A, Pepino, G, Sicignano, M, Rovani, and G, D'Addio
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User-Computer Interface ,Video Games ,Therapy, Computer-Assisted ,Vision Disorders ,Humans ,Biofeedback, Psychology ,Dancing ,Exercise Therapy - Abstract
Visually-impaired people can develop several unhealthy behaviors, including the lack of physical activity or sports, due to the incomplete maturity in the control of their body in the space. This research focuses on the creation of an "exergame" - a videogame especially designed to stimulate physical exercise - that, through voice commands, allows the visually impaired users to practice physical activity and train their abilities. This tool has been developed starting from an existing dance-game, by generating some appropriate interfaces that also involve the sensory channel of sight. Our research aims to study the effects related to this exergame on the motor control mechanism in a blind children's group, aged between 8 and 13 years: it focuses also on the joint use of movement analysis systems and of videogames in order to stimulate the physical activity in these subjects.
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- 2012
11. Analysis of upper arm reaching movements in robot-mediated therapy
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G. D’Addio, M. Cesarelli, M. Romano, A De Nunzio, N. Pappone, D’Addio, G., Cesarelli, M., Romano, M., De Nunzio, A, and Pappone, N.
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- 2011
12. Proposal for a telematic network for the treatment of elderly patients with heart failure
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G. D'addio, M. Bracale, F. Rengo, PEPINO, ALESSANDRO, G., D'Addio, Pepino, Alessandro, M., Bracale, and F., Rengo
- Published
- 1995
13. Integrated modelling of audiofrequency track circuits
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G. D'Addio, Andrea Mariscotti, P. Ferrari, and P. Pozzobon
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Engineering ,business.industry ,Electrical engineering ,Track circuit ,law.invention ,law ,Transmission line ,Electrical network ,Electronic engineering ,Equivalent circuit ,business ,Transformer ,Electrical impedance ,Overhead line ,Electronic circuit - Abstract
A 25 kV AC railway system is considered, where the variable length (10-20 km) section comprised between two electrical substations (ESSs) is equipped with audiofrequency track circuits (both transformer and s-bond coupled). The railway system is modelled using multiconductor transmission line (MTL) approach; the ESSs, the vehicle and the tuning unit of the track circuit are described by means of their equivalent circuit. The results consist of the analysis of the influence of s-bond circuits on the rail-to-rail impedance and the calculation of the disturbing voltage at the receiver terminals produced by samples of locomotive traction current from field data.
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- 1999
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14. Sensorial and motor evaluation of dyslexia: preliminary report
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L. Loffredo, M. Cesarelli, G. D’Addio, R. De Marco, R. M. Bove, M. Acquaviva, F. D’Esposito, AMBROSIO, GENNARO, Loffredo, L., Cesarelli, M., Ambrosio, Gennaro, D’Addio, G., De Marco, R., Bove, R. M., Acquaviva, M., and D’Esposito, F.
- Published
- 1994
15. Visual processing and ocular movements in children suffering from reading disability
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AMBROSIO, GENNARO, R. De Marco, L. Loffredo, M. Cesarelli, G. D’Addio, R. M. Bove, M. Acquaviva, F. D’Esposito, Ambrosio, Gennaro, De Marco, R., Loffredo, L., Cesarelli, M., D’Addio, G., Bove, R. M., Acquaviva, M., and D’Esposito, F.
- Published
- 1994
16. Fractal behavior of heart rate variability during ECG stress test in cardiac patients
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Paolo Bifulco, Francesco Giallauria, Maria Romano, Giovanni D'Addio, Carlo Vigorito, Mario Cesarelli, Luigi Maresca, Elisa Fornasa, D'Addio, Giovanni, Romano, Maria, Maresca, L, Bifulco, Paolo, Fornasa, E, Giallauria, F, Cesarelli, Mario, Vigorito, Carlo, G. Nollo, G., D'Addio, M., Romano, L., Maresca, P., Bifulco, Fornasa, Elisa, F., Giallauria, M., Cesarelli, and C., Vigorito
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nonlinear analysi ,medicine.medical_specialty ,animal structures ,High intensity ,HRV ,Late recovery ,Chaotic systems, Electrocardiography, Finite difference method, Heart, Recovery ,Cardiac patients, Fractal analysis, Fractal behaviors, Heart rate variability, Higuchi's algorithms, Linear measures, Nonlinear measure, Typical propertie ,Fractal analysis ,Fractals ,Fractal ,Chaotic systems ,Stress test ,Internal medicine ,nonlinear analysis ,Cardiology ,medicine ,Ecg stress ,stress test ,Heart rate variability ,Psychology ,Simulation ,circulatory and respiratory physiology - Abstract
Linear measures of heart rate variability (HRV) during ECG stress test has been widely questioned due to the high signal non-stationary. Such limitations can be overcome by nonlinear measures of HRV based on typical properties of chaotic systems and deterministic fractal. Very few paper addressed such issue and aim of the paper is to describe fractal behavior of HRV during exercise. A fractal analysis by Higuchi's algorithm (FD) has been performed on 26 cardiac patients during resting, stress, early and late recovery phases of ECG stress test. Results showed a significant FD increasing values from resting to stress phase that was not recovered at all immediately after the exercise, and it was slightly recovered both during early and late recovery phase. The performance of fractal analysis of HRV during and after high intensity exercise suggests that it could be a useful index assessing relevant information about underlying physiological recovery. ?????? 2014 IEEE.
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- 2014
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17. Relationships between linear and nonlinear indexes of heart rate variability in obstructive sleep apnea syndrome
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Agostino Accardo, Giovanni D'Addio, Rita Zotti, Elisa Fornasa, Alberto De Felice, G. Nollo, Fornasa, Elisa, Accardo, Agostino, R., Zotti, A., De Felice, and G., D'Addio
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medicine.medical_specialty ,business.industry ,Theoretical models ,HRV ,obstructive sleep apnea syndrome ,medicine.disease ,Approximate entropy ,Fractal dimension ,Obstructive sleep apnea ,Nonlinear system ,nonlinear analysis ,Frequency domain ,Internal medicine ,Anesthesia ,Cardiology ,Medicine ,Heart rate variability ,In patient ,business - Abstract
Heart rate variability (HRV) decrease has been described in patients with obstructive sleep apnea syndrome (OSAS). Nevertheless, time and frequency domain methods commonly used for HRV analysis are considered not completely reliable in case of respiratory and arrhythmic disorders. On the contrary, the nonlinear approach may supply powerful and promising tools to give a better insight of the autonomic control in OSAS. In this study, power-law β exponent, fractal dimension and approximate entropy parameters are calculated on the whole night recordings of 77 OSAS patients. The relationships between each pair of the parameters are quantified and discussed, also in comparison to the theoretical models.
- Published
- 2014
18. Heart Rate Variability in Noltisalis Database: Twenty-Four-Hour Fractal Dimension Analysis
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Corbi, G., Accardo, Agostino, Ferrara, N., Cesarelli, M., D’Addio, G., G., Corbi, Accardo, Agostino, N., Ferrara, M., Cesarelli, and G., D’Addio
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HRV ,Circadian Rhythm ,fractal analysis - Abstract
Nonlinear analysis of HRV has recently been recognized to provide valuable information in the prognostic classification of cardiac patients. Among the numerous non-linear parameters related to the fractal behaviour of the HRV signal, two classes have gained wide interest in the last years: that based on the 1/flike relationship, starting from the spectral power, and that based on fractal features. We present results obtained from the analysis of 50 heart rate variability series which have been extracted from Holter recordings in the 24-hours in normal subjects and pathological patients. Data have been collected inside a multicentric research program, which aimed at the nonlinear analysis of heart rate variability series. Differently from methods usually used in literature to evaluate the fractal dimension, the parameter used in this work has been extracted directly from the HRV sequences in the time domain, by means of the Higuchi's algorithm. Results show that this fractal dimension can be used to separate normal subjects from patients suffering from cardiovascular diseases and to evaluate the presence of circadianity in the HRV over the whole twenty four hours.
- Published
- 2013
19. Ultradian Rhythms During Day and Night in Normal and COPD Subjects
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Accardo, Agostino, Cusenza, Monica, Defelice, A., Fornasa, Elisa, D’Addio, G., Accardo, Agostino, Cusenza, Monica, A., Defelice, Fornasa, Elisa, and G., D’Addio
- Subjects
ultradian rhythm ,ultradian rhythms ,HRV ,COPD - Published
- 2012
20. Neurohormonal and functional correlates of linear and fractal behavior indexes of heart rate variability in HF patients
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D Addio, G., Roberto Maestri, Pinna, G. D., La Rovere, M. T., Corbi, G. M., Accardo, A., Ferrara, N., G., D'Addio, R., Maestri, Pinna, G. D., LA ROVERE, M. T., Corbi, G. M., Accardo, Agostino, N., Ferrara, D'Addio, G, Maestri, R, Pinna, Gd, La Rovere, Mt, Corbi, G, Accardo, A, and Ferrara, N
- Published
- 2009
21. Fractal analysis of heart rate variability in stroke patients
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D'Addio, G, Accardo, A, Corbi, Graziamaria, Russo, G, Ferrara, N, Rengo, F, Pinna, Gd, Accardo, Agostino, G., D’Addio, G., Corbi, G., Russo, N., Ferrara, F., Rengo, G. D., Pinna, D'Addio, G, Accardo, A, Corbi, Graziamaria, Russo, G, Ferrara, N, Rengo, F, and Pinna, Gd
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HRV ,stroke patients - Published
- 2006
22. Reproducibility of nonlinear indexes of HRV in chronic heart failure
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D'Addio, G., Accardo, Agostino, Maestri, R., Picone, C., Furgi, G., Rengo, F., G., D'Addio, Accardo, Agostino, R., Maestri, C., Picone, G., Furgi, and F., Rengo
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chronic failure ,HRV ,non linear analysis - Published
- 2003
23. Fractal behaviour of heart rate variability reflects abnormal respiration patterns in OSAS patients
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D Addio, G., Accardo, A., Fornasa, E., Mario Cesarelli, Felice, A., G., D’Addio, Accardo, Agostino, Fornasa, Elisa, M., Cesarelli, and A., De Felice
- Subjects
HRV ,obstructive sleep apnea syndrome ,nonlinear analysis - Abstract
Although heart rate variability (HRV) decreasing has been usually described in obstructive sleep apnea syndrome (OSAS), some studies have recently questioned the validity of spectral HRV analysis in presence of respiratory and arrhythmic disorders. Fractal analysis of HRV is an emerging nonlinear technique overcoming these limitations and allowing short term HRV assessment during hypo/apnea phases. The aim of this study is to analyse the Fractal features in sleep apnea in order to find as these characteristics could change during abnormal respiration patterns in OSAS. We studied 30 polysomnographic recordings of severe OSAS (AHl30) pts. (age 55±9) and 10 PR of normal subjects (age 46±4). Hypo/apnea phases and related beat-to-beat time series have been detected and classified by automated algorithms and manually verified by expert technicians. Fractal analysis was performed by the Higuchi algorithm (FD). Results showed that while FD does not significantly differ between Normals (l.6J±0.09) and normal breath epochs in OSAS, it significantly (p
24. Relationship between Fractal Dimension and Power-Law Exponent of Heart Rate Variability in Normal and Heart Failure Subjects
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Cusenza, M., Accardo, A., D Addio, G., Graziamaria Corbi, Cusenza, Monica, Accardo, Agostino, G., D'Addio, G., Corbi, D'Addio, Gianni, and Corbi, Graziamaria
- Subjects
fractal dimension ,power-law exponent ,Cardiology ,Heart ,Fractal-like ,Fractional Brownian motion ,Heart failure ,Heart rate variability ,Linear dependence ,Power law exponent ,Brownian movement ,Finite difference method ,Spectral density ,Partial discharge - Abstract
Among the plethora of indices that can describe the fractal-like behaviour of heart rate variability (HRV), the fractal dimension (FD) and the power-law exponent (β) have gained wide acceptance. Since HRV is generally modelled with fractional Brownian motion (fBm), the linear scaling relationship between β and FD, valid for fBm, is often applied to HRV series to derive one index from the other. In this paper the relationship between β and FD is calculated in normal (NR) and heart failure (HF) HRV series. Results revealed that a linear dependence between β and FD can be found only when the slope of the spectral density is calculated over the whole spectrum instead of considering more widespread very low frequency ranges. Moreover, the relationship is slightly different from that characterizing fBm and is not unique for the two categories of subjects. The common practice of estimating β from FD for HRV applying the theoretical relationship should be reconsidered.
25. Prediction of mortality in heart failure by machine learning. Comparison with statistical modeling.
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Scrutinio D, Amitrano F, Guida P, Coccia A, Pagano G, D'addio G, and Passantino A
- Abstract
Background: Assessing the relative performance of machine learning (ML) methods and conventional statistical methods in predicting prognosis in heart failure (HF) still remains a challenging research field., Methods: The primary outcome was three-year mortality. The following 5 machine learning approaches were used for modeling: Random Forest (RF), Gradient Boosting, Extreme Gradient Boosting (XGBoost), Support Vector Machine, and Multilayer perceptron. We compared the performance of the best performing ML models to the MAGGIC (Meta-analysis Global Group in Chronic Heart Failure) score and a novel logistic regression model (LRM) developed using the same set of variables used to develop the machine learning models. The performance was determined based on discrimination, calibration, and net benefit., Results: The XGBoost and the RF were the best performing ML models. The XGBoost provided the highest discrimination (C-statistic: 0.793) and the lowest Brier score (0.178); the RF model had a C-statistic of 0.779 and provided the highest area under the precision-recall curve (0.636). Both models were well calibrated. Both the XGboost and RF models outperformed MAGGIC score. The LRM had a C-statistic of 0.811 and a Brier score of 0.160 and was well calibrated. The XGBoost, RF, and LRM gave a higher net benefit than MAGGIC score; the XGBoost, RF, and logistic regression model gave similar net benefit., Conclusions: RF and XGBoost models outperformed MAGGIC in predicting mortality. However, they did not offer any improvement over a logistic regression model built using the same set of covariates considered in the ML modeling., Competing Interests: Declarations of competing interest The authors declare that they have no conflict of interest to disclose., (Copyright © 2025. Published by Elsevier B.V.)
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- 2025
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26. A Deep Learning-Based Framework Oriented to Pathological Gait Recognition with Inertial Sensors.
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Palazzo L, Suglia V, Grieco S, Buongiorno D, Brunetti A, Carnimeo L, Amitrano F, Coccia A, Pagano G, D'Addio G, and Bevilacqua V
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- Humans, Neural Networks, Computer, Male, Walking physiology, Adult, Female, Gait Disorders, Neurologic physiopathology, Gait Disorders, Neurologic diagnosis, Gait Disorders, Neurologic rehabilitation, Algorithms, Deep Learning, Gait physiology
- Abstract
Abnormal locomotor patterns may occur in case of either motor damages or neurological conditions, thus potentially jeopardizing an individual's safety. Pathological gait recognition (PGR) is a research field that aims to discriminate among different walking patterns. A PGR-oriented system may benefit from the simulation of gait disorders by healthy subjects, since the acquisition of actual pathological gaits would require either a higher experimental time or a larger sample size. Only a few works have exploited abnormal walking patterns, emulated by unimpaired individuals, to perform PGR with Deep Learning-based models. In this article, the authors present a workflow based on convolutional neural networks to recognize normal and pathological locomotor behaviors by means of inertial data related to nineteen healthy subjects. Although this is a preliminary feasibility study, its promising performance in terms of accuracy and computational time pave the way for a more realistic validation on actual pathological data. In light of this, classification outcomes could support clinicians in the early detection of gait disorders and the tracking of rehabilitation advances in real time.
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- 2025
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27. Influence of Bio-Additives on Recycled Asphalt Pavements.
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D'Addio G, Oreto C, Viscione N, and Veropalumbo R
- Abstract
The construction and maintenance of asphalt pavements is a resource-consuming sector, where the continuous rehabilitation of the superficial layers demands large volumes of non-renewable resources. The present work focuses on the design and characterization of asphalt mixtures for the binder layer of an asphalt pavement containing 50% reclaimed asphalt (RAP), in which seven different bio-based additives, identified as R1A, R1C, R2A, R2B, R2C, R3A, and R3B, were added to improve the workability, strength, and stiffness properties. The experimental program envisioned the hot mixing of aggregates and RAP with either a 50/70 or a 70/100 bitumen and, in turn, each of the seven bio-additives. The asphalt mixtures underwent the characterization of their densification properties; air voids; indirect tensile strength (ITS); indirect tensile stiffness modulus at 10, 20, 40, and 60 °C; and rutting resistance at 60 °C. The results highlighted that the performance in terms of workability and ITS of the resulting mixtures depends on the type of bio-additive and largely on the fresh bitumen type, while the stiffness at high temperature is not significantly affected by the presence of the bio-additives.
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- 2024
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28. Measuring Surface Electromyography with Textile Electrodes in a Smart Leg Sleeve.
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Amitrano F, Coccia A, Pagano G, Biancardi A, Tombolini G, Marsico V, and D'Addio G
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- Humans, Male, Adult, Female, Muscle, Skeletal physiology, Leg physiology, Electromyography methods, Electromyography instrumentation, Electrodes, Wearable Electronic Devices, Textiles
- Abstract
This paper presents the design, development, and validation of a novel e-textile leg sleeve for non-invasive Surface Electromyography (sEMG) monitoring. This wearable device incorporates e-textile sensors for sEMG signal acquisition from the lower limb muscles, specifically the anterior tibialis and lateral gastrocnemius. Validation was conducted by performing a comparative study with eleven healthy volunteers to evaluate the performance of the e-textile sleeve in acquiring sEMG signals compared to traditional Ag/AgCl electrodes. The results demonstrated strong agreement between the e-textile and conventional methods in measuring descriptive metrics of the signals, including area, power, mean, and root mean square. The paired data t -test did not reveal any statistically significant differences, and the Bland-Altman analysis indicated negligible bias between the measures recorded using the two methods. In addition, this study evaluated the wearability and comfort of the e-textile sleeve using the Comfort Rating Scale (CRS). Overall, the scores confirmed that the proposed device is highly wearable and comfortable, highlighting its suitability for everyday use in patient care.
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- 2024
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29. A Novel Framework Based on Deep Learning Architecture for Continuous Human Activity Recognition with Inertial Sensors.
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Suglia V, Palazzo L, Bevilacqua V, Passantino A, Pagano G, and D'Addio G
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- Humans, Human Activities, Activities of Daily Living, Engineering, Healthy Volunteers, Deep Learning
- Abstract
Frameworks for human activity recognition (HAR) can be applied in the clinical environment for monitoring patients' motor and functional abilities either remotely or within a rehabilitation program. Deep Learning (DL) models can be exploited to perform HAR by means of raw data, thus avoiding time-demanding feature engineering operations. Most works targeting HAR with DL-based architectures have tested the workflow performance on data related to a separate execution of the tasks. Hence, a paucity in the literature has been found with regard to frameworks aimed at recognizing continuously executed motor actions. In this article, the authors present the design, development, and testing of a DL-based workflow targeting continuous human activity recognition (CHAR). The model was trained on the data recorded from ten healthy subjects and tested on eight different subjects. Despite the limited sample size, the authors claim the capability of the proposed framework to accurately classify motor actions within a feasible time, thus making it potentially useful in a clinical scenario.
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- 2024
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30. Biomechanical Effects of Using a Passive Exoskeleton for the Upper Limb in Industrial Manufacturing Activities: A Pilot Study.
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Coccia A, Capodaglio EM, Amitrano F, Gabba V, Panigazzi M, Pagano G, and D'Addio G
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- Humans, Pilot Projects, Upper Extremity physiology, Muscle, Skeletal physiology, Shoulder physiology, Electromyography, Biomechanical Phenomena, Exoskeleton Device
- Abstract
This study investigates the biomechanical impact of a passive Arm-Support Exoskeleton (ASE) on workers in wool textile processing. Eight workers, equipped with surface electrodes for electromyography (EMG) recording, performed three industrial tasks, with and without the exoskeleton. All tasks were performed in an upright stance involving repetitive upper limbs actions and overhead work, each presenting different physical demands in terms of cycle duration, load handling and percentage of cycle time with shoulder flexion over 80°. The use of ASE consistently lowered muscle activity in the anterior and medial deltoid compared to the free condition (reduction in signal Root Mean Square (RMS) -21.6% and -13.6%, respectively), while no difference was found for the Erector Spinae Longissimus (ESL) muscle. All workers reported complete satisfaction with the ASE effectiveness as rated on Quebec User Evaluation of Satisfaction with Assistive Technology (QUEST), and 62% of the subjects rated the usability score as very high (>80 System Usability Scale (SUS)). The reduction in shoulder flexor muscle activity during the performance of industrial tasks is not correlated to the level of ergonomic risk involved. This preliminary study affirms the potential adoption of ASE as support for repetitive activities in wool textile processing, emphasizing its efficacy in reducing shoulder muscle activity. Positive worker acceptance and intention to use ASE supports its broader adoption as a preventive tool in the occupational sector.
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- 2024
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31. Effects of Ankle-Foot Orthosis on Balance of Foot Drop Patients.
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Amitrano F, Coccia A, Pagano G, Biancardi A, Tombolini G, and D'Addio G
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- Humans, Ankle, Ankle Joint, Gait, Muscle Weakness, Paresis, Biomechanical Phenomena, Foot Orthoses, Peroneal Neuropathies
- Abstract
Ankle-Foot Orthoses (AFOs) are common non-surgical treatments used to support foot and ankle joint when their normal functioning is compromised. AFOs have relevant impact on gait biomechanics, while scientific literature about effects on static balance is less strong and confusing. This study aims to assess the effectiveness of a plastic semi-rigid AFO in improving static balance on foot drop patients. Results underline that no significant effects on static balance is obtained on the study population when the AFO is used on the impaired foot.
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- 2023
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32. Reliability of IMU-Derived Gait Parameters in Foot Drop Patients.
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Coccia A, Amitrano F, Pagano G, Biancardi A, Tombolini G, and D'Addio G
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- Humans, Reproducibility of Results, Gait, Walking, Muscle Weakness complications, Paresis complications, Biomechanical Phenomena, Ankle Joint, Peroneal Neuropathies complications, Gait Disorders, Neurologic diagnosis, Gait Disorders, Neurologic etiology
- Abstract
Foot drop is a deficit in foot dorsiflexion causing difficulties in walking. Passive ankle-foot orthoses are external devices used to support the drop foot improving gait functions. Foot drop deficits and therapeutic effects of AFO can be highlighted using gait analysis. This study reports values of the major spatiotemporal gait parameters assessed using wearable inertial sensors on a group of 25 subjects suffering from unilateral foot drop. Collected data were used to assess the test-retest reliability by means of Intraclass Correlation Coefficient and Minimum Detectable Change. Excellent test-retest reliability was found for all the parameters in all walking conditions. The analysis of Minimum Detectable Change identified the gait phases duration and the cadence as the most appropriate parameters to detect changes or improvements in subject gait after rehabilitation or specific treatment.
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- 2023
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33. Gait asymmetry in stroke patients with unilateral spatial neglect.
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Moretta P, Donisi L, Balbi P, Cesarelli G, Trojano L, and D'Addio G
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- Humans, Gait, Stroke complications, Perceptual Disorders etiology, Perceptual Disorders psychology, Stroke Rehabilitation, Cognitive Dysfunction
- Abstract
The recovery of independent gait represents one of the main functional goals of the rehabilitative interventions after stroke but it can be hindered by the presence of unilateral spatial neglect (USN). The aim of the paper is to study if the presence of USN in stroke patients affects lower limb gait parameters between the two body sides, differently from what could be expected by the motor impairment alone, and to explore whether USN is associated to specific gait asymmetry. Thirty-five stroke patients (right or left lesion and ischemic or hemorrhagic etiology) who regained independent gait were assessed for global cognitive functioning and USN. All patients underwent a gait analysis session by using a wearable inertial system, kinematic parameters were computed. Enrolled patients presented altered motion parameters. Stroke patients with USN showed specific asymmetries in the following parameters: stance phase, swing phase, and knee range of motion. No differences in the clinical scores were found as the presence of USN. The presence of USN was associated with a specific form of altered gait symmetry. These findings may help clinicians to develop more tailored rehabilitative training to enhance gait efficacy of patients with motor defects complicated by the presence of selected cognitive impairments. Overview of the experiment setup. The workflow shows: diagnosis of unilateral spatial neglect by the neuropsychologist, sensors placement, gait analysis protocol and evaluation of the gait asymmetry together with the statistically significant features., (© 2022. International Federation for Medical and Biological Engineering.)
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- 2023
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34. Using Features Extracted from Upper Limb Reaching Tasks to Detect Parkinson's Disease by means of Machine Learning Models.
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Cesarelli G, Donisi L, Amato F, Romano M, Cesarelli M, D'Addio G, Ponsiglione AM, and Ricciardi C
- Abstract
While in the literature there is much interest in investigating lower limbs gait of patients affected by neurological diseases, such as Parkinson's Disease (PD), fewer publications involving upper limbs movements are available. In previous studies, 24 motion signals (the so-called reaching tasks) of the upper limbs of PD patients and Healthy Controls (HCs) were used to extract several kinematic features through a custom-made software; conversely, the aim of our paper is to investigate the possibility to build models - using these features - for distinguishing PD patients from HCs. First, a binary logistic regression and, then, a Machine Learning (ML) analysis was performed by implementing five algorithms through the Knime Analytics Platform. The ML analysis was performed twice: first, a leave-one out-cross validation was applied; then, a wrapper feature selection method was implemented to identify the best subset of features that could maximize the accuracy. The binary logistic regression achieved an accuracy of 90.5%, demonstrating the importance of the maximum jerk during subjects upper limb motion; the Hosmer-Lemeshow test supported the validity of this model (p-value=0.408). The first ML analysis achieved high evaluation metrics by overcoming 95% of accuracy; the second ML analysis achieved a perfect classification with 100% of both accuracy and area under the curve receiver operating characteristics. The top-five features in terms of importance were the maximum acceleration, smoothness, duration, maximum jerk and kurtosis. The investigation carried out in our work has proved the predictive power of the features, extracted from the reaching tasks involving the upper limbs, to distinguish HCs and PD patients.
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- 2023
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35. Machine learning can predict mild cognitive impairment in Parkinson's disease.
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Amboni M, Ricciardi C, Adamo S, Nicolai E, Volzone A, Erro R, Cuoco S, Cesarelli G, Basso L, D'Addio G, Salvatore M, Pace L, and Barone P
- Abstract
Background: Clinical markers of cognitive decline in Parkinson's disease (PD) encompass several mental non-motor symptoms such as hallucinations, apathy, anxiety, and depression. Furthermore, freezing of gait (FOG) and specific gait alterations have been associated with cognitive dysfunction in PD. Finally, although low cerebrospinal fluid levels of amyloid-β42 have been found to predict cognitive decline in PD, hitherto PET imaging of amyloid-β (Aβ) failed to consistently demonstrate the association between Aβ plaques deposition and mild cognitive impairment in PD (PD-MCI)., Aim: Finding significant features associated with PD-MCI through a machine learning approach., Patients and Methods: Patients were assessed with an extensive clinical and neuropsychological examination. Clinical evaluation included the assessment of mental non-motor symptoms and FOG using the specific items of the MDS-UPDRS I and II. Based on the neuropsychological examination, patients were classified as subjects without and with MCI (noPD-MCI, PD-MCI). All patients were evaluated using a motion analysis system. A subgroup of PD patients also underwent amyloid PET imaging. PD-MCI and noPD-MCI subjects were compared with a univariate statistical analysis on demographic data, clinical features, gait analysis variables, and amyloid PET data. Then, machine learning analysis was performed two times: Model 1 was implemented with age, clinical variables (hallucinations/psychosis, depression, anxiety, apathy, sleep problems, FOG), and gait features, while Model 2, including only the subgroup performing PET, was implemented with PET variables combined with the top five features of the former model., Results: Seventy-five PD patients were enrolled (33 PD-MCI and 42 noPD-MCI). PD-MCI vs. noPD-MCI resulted in older and showed worse gait patterns, mainly characterized by increased dynamic instability and reduced step length; when comparing amyloid PET data, the two groups did not differ. Regarding the machine learning analyses, evaluation metrics were satisfactory for Model 1 overcoming 80% for accuracy and specificity, whereas they were disappointing for Model 2., Conclusions: This study demonstrates that machine learning implemented with specific clinical features and gait variables exhibits high accuracy in predicting PD-MCI, whereas amyloid PET imaging is not able to increase prediction. Additionally, our results prompt that a data mining approach on certain gait parameters might represent a reliable surrogate biomarker of PD-MCI., Competing Interests: Unrelated to this study, PB received consultancies as a member of the advisory board for Zambon, Lundbeck, UCB, Chiesi, Abbvie, and Acorda; RE received consultancies from Zambon and honoraria from TEVA. The remaining authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest., (Copyright © 2022 Amboni, Ricciardi, Adamo, Nicolai, Volzone, Erro, Cuoco, Cesarelli, Basso, D'Addio, Salvatore, Pace and Barone.)
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- 2022
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36. A Logistic Regression Model for Biomechanical Risk Classification in Lifting Tasks.
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Donisi L, Cesarelli G, Capodaglio E, Panigazzi M, D'Addio G, Cesarelli M, and Amato F
- Abstract
Lifting is one of the most potentially harmful activities for work-related musculoskeletal disorders (WMSDs), due to exposure to biomechanical risk. Risk assessment for work activities that involve lifting loads can be performed through the NIOSH (National Institute of Occupational Safety and Health) method, and specifically the Revised NIOSH Lifting Equation (RNLE). Aim of this work is to explore the feasibility of a logistic regression model fed with time and frequency domains features extracted from signals acquired through one inertial measurement unit (IMU) to classify risk classes associated with lifting activities according to the RNLE. Furthermore, an attempt was made to evaluate which are the most discriminating features relating to the risk classes, and to understand which inertial signals and which axis were the most representative. In a simplified scenario, where only two RNLE variables were altered during lifting tasks performed by 14 healthy adults, inertial signals (linear acceleration and angular velocity) acquired using one IMU placed on the subject's sternum during repeated rhythmic lifting tasks were automatically segmented to extract several features in the time and frequency domains. The logistic regression model fed with significant features showed good results to discriminate "risk" and "no risk" NIOSH classes with an accuracy, sensitivity and specificity equal to 82.8%, 84.8% and 80.9%, respectively. This preliminary work indicated that a logistic regression model-fed with specific inertial features extracted by signals acquired using a single IMU sensor placed on the sternum-is able to discriminate risk classes according to the RNLE in a simplified context, and therefore could be a valid tool to assess the biomechanical risk in an automatic way also in more complex conditions (e.g., real working scenarios).
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- 2022
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37. A machine learning approach to characterize patients with asthma exacerbation attending an acute care setting.
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D'Amato M, Ambrosino P, Simioli F, Adamo S, Stanziola AA, D'Addio G, Molino A, and Maniscalco M
- Subjects
- Disease Progression, Female, Hospitalization, Humans, Machine Learning, Male, Respiratory Function Tests, Spirometry, Asthma drug therapy
- Abstract
Background: One of the main problems in poorly controlled asthma is the access to the Emergency Department (ED). Using a machine learning (ML) approach, the aim of our study was to identify the main predictors of severe asthma exacerbations requiring hospital admission., Methods: Consecutive patients with asthma exacerbation were screened for inclusion within 48 hours of ED discharge. A k-means clustering algorithm was implemented to evaluate a potential distinction of different phenotypes. K-Nearest Neighbor (KNN) as instance-based algorithm and Random Forest (RF) as tree-based algorithm were implemented in order to classify patients, based on the presence of at least one additional access to the ED in the previous 12 months., Results: To train our model, we included 260 patients (31.5% males, mean age 47.6 years). Unsupervised ML identified two groups, based on eosinophil count. A total of 86 patients with eosinophiles ≥370 cells/µL were significantly older, had a longer disease duration, more restrictions to daily activities, and lower rate of treatment compared to 174 patients with eosinophiles <370 cells/μL. In addition, they reported lower values of predicted FEV
1 (64.8±12.3% vs. 83.9±17.3%) and FEV1 /FVC (71.3±9.3 vs. 78.5±6.8), with a higher amount of exacerbations/year. In supervised ML, KNN achieved the best performance in identifying frequent exacerbators (AUROC: 96.7%), confirming the importance of spirometry parameters and eosinophil count, along with the number of prior exacerbations and other clinical and demographic variables., Conclusions: This study confirms the key prognostic value of eosinophiles in asthma, suggesting the usefulness of ML in defining biological pathways that can help plan personalized pharmacological and rehabilitation strategies., Competing Interests: Conflicts of interest The authors declare no conflicts of interest., (Copyright © 2022. Published by Elsevier B.V.)- Published
- 2022
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38. A Machine Learning Approach to Predict the Rehabilitation Outcome in Convalescent COVID-19 Patients.
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Adamo S, Ambrosino P, Ricciardi C, Accardo M, Mosella M, Cesarelli M, d'Addio G, and Maniscalco M
- Abstract
Background: After the acute disease, convalescent coronavirus disease 2019 (COVID-19) patients may experience several persistent manifestations that require multidisciplinary pulmonary rehabilitation (PR). By using a machine learning (ML) approach, we aimed to evaluate the clinical characteristics predicting the effectiveness of PR, expressed by an improved performance at the 6-min walking test (6MWT)., Methods: Convalescent COVID-19 patients referring to a Pulmonary Rehabilitation Unit were consecutively screened. The 6MWT performance was partitioned into three classes, corresponding to different degrees of improvement (low, medium, and high) following PR. A multiclass supervised classification learning was performed with random forest (RF), adaptive boosting (ADA-B), and gradient boosting (GB), as well as tree-based and k-nearest neighbors (KNN) as instance-based algorithms., Results: To train and validate our model, we included 189 convalescent COVID-19 patients (74.1% males, mean age 59.7 years). RF obtained the best results in terms of accuracy (83.7%), sensitivity (84.0%), and area under the ROC curve (94.5%), while ADA-B reached the highest specificity (92.7%)., Conclusions: Our model enables a good performance in predicting the rehabilitation outcome in convalescent COVID-19 patients.
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- 2022
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39. Statistical Analysis and Kinematic Assessment of Upper Limb Reaching Task in Parkinson's Disease.
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Ponsiglione AM, Ricciardi C, Amato F, Cesarelli M, Cesarelli G, and D'Addio G
- Subjects
- Biomechanical Phenomena, Humans, Quality of Life, Upper Extremity, Parkinson Disease, Stroke
- Abstract
The impact of neurodegenerative disorders is twofold; they affect both quality of life and healthcare expenditure. In the case of Parkinson's disease, several strategies have been attempted to support the pharmacological treatment with rehabilitation protocols aimed at restoring motor function. In this scenario, the study of upper limb control mechanisms is particularly relevant due to the complexity of the joints involved in the movement of the arm. For these reasons, it is difficult to define proper indicators of the rehabilitation outcome. In this work, we propose a methodology to analyze and extract an ensemble of kinematic parameters from signals acquired during a complex upper limb reaching task. The methodology is tested in both healthy subjects and Parkinson's disease patients (N = 12), and a statistical analysis is carried out to establish the value of the extracted kinematic features in distinguishing between the two groups under study. The parameters with the greatest number of significances across the submovements are duration, mean velocity, maximum velocity, maximum acceleration, and smoothness. Results allowed the identification of a subset of significant kinematic parameters that could serve as a proof-of-concept for a future definition of potential indicators of the rehabilitation outcome in Parkinson's disease.
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- 2022
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40. The E-Textile for Biomedical Applications: A Systematic Review of Literature.
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Cesarelli G, Donisi L, Coccia A, Amitrano F, D'Addio G, and Ricciardi C
- Abstract
The use of e-textile technologies spread out in the scientific research with several applications in both medical and nonmedical world. In particular, wearable technologies and miniature electronics devices were implemented and tested for medical research purposes. In this paper, a systematic review regarding the use of e-textile for clinical applications was conducted: the Scopus and Pubmed databases were investigate by considering research studies from 2010 to 2020. Overall, 262 papers were found, and 71 of them were included in the systematic review. Of the included studies, 63.4% focused on information and communication technology studies, while the other 36.6% focused on industrial bioengineering applications. Overall, 56.3% of the research was published as an article, while the remainder were conference papers. Papers included in the review were grouped by main aim into cardiological, muscular, physical medicine and orthopaedic, respiratory, and miscellaneous applications. The systematic review showed that there are several types of applications regarding e-textile in medicine and several devices were implemented as well; nevertheless, there is still a lack of validation studies on larger cohorts of subjects since the majority of the research only focuses on developing and testing the new device without considering a further extended validation.
- Published
- 2021
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41. A multiple linear regression approach to extimate lifted load from features extracted from inertial data.
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Donisi L, Capodaglio EM, Amitrano F, Cesarelli G, Pagano G, and D'Addio G
- Subjects
- Biomechanical Phenomena, Humans, Lifting, Linear Models, Musculoskeletal Diseases, Occupational Health
- Abstract
Summary: Work-related musculoskeletal disorders are among the main occupational health problems. Substantial evidence has shown that work-related physical risk factors are the main source of low back complaints, particularly affecting heavy and repetitive manual lifting activities. The aim of the study is, during load lifting tasks, to explore the correlation between the time domain features extracted from the acceleration and angular velocity signals of the performing subject and the load lifted, and to explore the feasibility of a multiple linear regression model to predict the lifted load. The acceleration and angular velocity signals were acquired along the three directions of space by means of an inertial sensor placed on the subject's chest, during lifting activities with load gradually increased by 1 kg from 0 kg to 18 kg. Successively three time-domain features (Root Mean Square, Standard Deviation and MinMax value) were extracted from the acquired signals. First a correlation analysis was carried out between each individual feature and the load lifted (calculating r); then the time-domain features that proved most representative (strong correlation) were used to create a multiple linear regression model (calculating R-square). The statistical analysis was carried out by means of the Pearson correlation and multiple linear regression model was fed with the most informative time-domain features according to the correlation analysis. The correlation analysis showed a strong correlation (r > 0,7) between six features (three extracted from z-axes acceleration and three extracted from y-axes angular velocity) and the lifted load. The predictive multiple linear regression model, fed with these six features achieved a Rsquare greater than 0,9.The study demonstrated that the proposed combination of kinematic features and a multiple regression model represents a valid approach to automatically calculate the load lifted based on raw signals obtained by means of an inertial sensor placed on the chest. The results confirm the potential application of this methodology to indirectly monitor the load lifted by workers during their activity., Competing Interests: The authors of this article have no conflict of interests to disclose., (Copyright© by GIMLE.)
- Published
- 2021
42. Reducing the Healthcare-Associated Infections in a Rehabilitation Hospital under the Guidance of Lean Six Sigma and DMAIC.
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Cesarelli G, Petrelli R, Ricciardi C, D'Addio G, Monce O, Ruccia M, and Cesarelli M
- Abstract
The reduction of healthcare-associated infections (HAIs) is one of the most important issues in the healthcare context for every type of hospital. In three operational units of the Scientific Clinical Institutes Maugeri SpA SB, a rehabilitation hospital in Cassano delle Murge (Italy), some corrective measures were introduced in 2017 to reduce the occurrence of HAIs. Lean Six Sigma was used together with the Define, Measure, Analyze, Improve, Control (DMAIC) roadmap to analyze both the impact of such measures on HAIs and the length of hospital stay (LOS) in the Rehabilitative Cardiology, Rehabilitative Neurology, Functional Recovery and Rehabilitation units in the Medical Center for Intensive Rehabilitation. The data of 2415 patients were analyzed, considering the phases both before and after the introduction of the measures. The hospital experienced a LOS reduction in both patients with and without HAIs; in particular, Cardiology had the greatest reduction for patients with infections (-7 days). The overall decrease in HAIs in the hospital was 3.44%, going from 169 to 121 cases of infections. The noteworthy decrease in LOS implies an increase in admissions and in the turnover indicator of the hospital, which has a positive impact on the hospital management as well as on costs.
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- 2021
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43. Extracting Features from Poincaré Plots to Distinguish Congestive Heart Failure Patients According to NYHA Classes.
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D'Addio G, Donisi L, Cesarelli G, Amitrano F, Coccia A, La Rovere MT, and Ricciardi C
- Abstract
Heart-rate variability has proved a valid tool in prognosis definition of patients with congestive heart failure (CHF). Previous research has documented Poincaré plot analysis as a valuable approach to study heart-rate variability performance among different subjects. In this paper, we explored the possibility to feed machine-learning (ML) algorithms using unconventional quantitative parameters extracted from Poincaré plots (generated from 24-h electrocardiogram recordings) to classify patients with CHF belonging to different New York Heart Association (NYHA) classes. We performed in sequence the following investigations: first, a statistical analysis was carried out on 9 morphological parameters, automatically measured from Poincaré plots. Subsequently, a feature selection through a wrapper with a 10-fold cross-validation method was performed to find the best subset of features which maximized the classification accuracy for each considered ML algorithm. Finally, patient classification was assessed through a ML analysis using AdaBoost of Decision Tree, k-Nearest Neighbors and Naive Bayes algorithms. A univariate statistical analysis proved 5 out of 9 parameters presented statistically significant differences among patients of distinct NYHA classes; similarly, a multivariate logistic regression confirmed the importance of the parameter ρy in the separability between low-risk and high-risk classes. The ML analysis achieved promising results in terms of evaluation metrics (especially the Naive Bayes algorithm), with accuracies greater than 80% and Area Under the Receiver Operating Curve indices greater than 0.7 for the overall three algorithms. The study indicates the proposed features have a predictive power to discriminate the NYHA classes, to which the features seem evenly correlated. Despite the NYHA classification being subjective and easily recognized by cardiologists, the potential relevance in the clinical cardiology of the proposed features and the promising ML results implies the methodology could be a valuable approach to automatically classify CHF. Future investigations on enriched datasets may further confirm the presented evidence.
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- 2021
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44. Positive impact of short-term gait rehabilitation in Parkinson patients: a combined approach based on statistics and machine learning.
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Donisi L, Cesarelli G, Balbi P, Provitera V, Lanzillo B, Coccia A, and D'Addio G
- Subjects
- Gait, Gait Analysis, Humans, Machine Learning, Parkinson Disease complications, Wearable Electronic Devices
- Abstract
Parkinson's disease is the second most common neurodegenerative disorder in the world. Assumed that gait dysfunctions represent a major motor symptom for the pathology, gait analysis can provide clinicians quantitative information about the rehabilitation outcome of patients. In this scenario, wearable inertial systems for gait analysis can be a valid tool to assess the functional recovery of patients in an automatic and quantitative way, helping clinicians in decision making. Aim of the study is to evaluate the impact of the short-term rehabilitation on gait and balance of patients with Parkinson's disease. A cohort of 12 patients with Idiopathic Parkinson's disease performed a gait analysis session instrumented by a wearable inertial system for gait analysis: Opal System, by APDM Inc., with spatial and temporal parameters being analyzed through a statistic and machine learning approach. Six out of fourteen motion parameters exhibited a statistically significant difference between the measurements at admission and at discharge of the patients, while the machine learning analysis confirmed the separability of the two phases in terms of Accuracy and Area under the Receiving Operating Characteristic Curve. The rehabilitation treatment especially improved the motion parameters related to the gait. The study shows the positive impact on the gait of a short-term rehabilitation in patients with Parkinson's disease and the feasibility of the wearable inertial devices, that are increasingly spreading in clinical practice, to quantitatively assess the gait improvement.
- Published
- 2021
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45. Gait analysis may distinguish progressive supranuclear palsy and Parkinson disease since the earliest stages.
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Amboni M, Ricciardi C, Picillo M, De Santis C, Ricciardelli G, Abate F, Tepedino MF, D'Addio G, Cesarelli G, Volpe G, Calabrese MC, Cesarelli M, and Barone P
- Subjects
- Aged, Diagnosis, Differential, Female, Humans, Logistic Models, Male, Middle Aged, Parkinson Disease physiopathology, Supranuclear Palsy, Progressive physiopathology, Gait Analysis, Parkinson Disease diagnosis, Supranuclear Palsy, Progressive diagnosis
- Abstract
Progressive supranuclear palsy (PSP) is a rare and rapidly progressing atypical parkinsonism. Albeit existing clinical criteria for PSP have good specificity and sensitivity, there is a need for biomarkers able to capture early objective disease-specific abnormalities. This study aimed to identify gait patterns specifically associated with early PSP. The study population comprised 104 consecutively enrolled participants (83 PD and 21 PSP patients). Gait was investigated using a gait analysis system during normal gait and a cognitive dual task. Univariate statistical analysis and binary logistic regression were used to compare all PD patients and all PSP patients, as well as newly diagnosed PD and early PSP patients. Gait pattern was poorer in PSP patients than in PD patients, even from early stages. PSP patients exhibited reduced velocity and increased measures of dynamic instability when compared to PD patients. Application of predictive models to gait data revealed that PD gait pattern was typified by increased cadence and longer cycle length, whereas a longer stance phase characterized PSP patients in both mid and early disease stages. The present study demonstrates that quantitative gait evaluation clearly distinguishes PSP patients from PD patients since the earliest stages of disease. First, this might candidate gait analysis as a reliable biomarker in both clinical and research setting. Furthermore, our results may offer speculative clues for conceiving early disease-specific rehabilitation strategies.
- Published
- 2021
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46. Work-Related Risk Assessment According to the Revised NIOSH Lifting Equation: A Preliminary Study Using a Wearable Inertial Sensor and Machine Learning.
- Author
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Donisi L, Cesarelli G, Coccia A, Panigazzi M, Capodaglio EM, and D'Addio G
- Subjects
- Biomechanical Phenomena, Humans, Machine Learning, National Institute for Occupational Safety and Health, U.S., Risk Assessment, United States, Lifting, Wearable Electronic Devices
- Abstract
Many activities may elicit a biomechanical overload. Among these, lifting loads can cause work-related musculoskeletal disorders. Aspiring to improve risk prevention, the National Institute for Occupational Safety and Health (NIOSH) established a methodology for assessing lifting actions by means of a quantitative method based on intensity, duration, frequency and other geometrical characteristics of lifting. In this paper, we explored the machine learning (ML) feasibility to classify biomechanical risk according to the revised NIOSH lifting equation. Acceleration and angular velocity signals were collected using a wearable sensor during lifting tasks performed by seven subjects and further segmented to extract time-domain features: root mean square, minimum, maximum and standard deviation. The features were fed to several ML algorithms. Interesting results were obtained in terms of evaluation metrics for a binary risk/no-risk classification; specifically, the tree-based algorithms reached accuracies greater than 90% and Area under the Receiver operating curve characteristics curves greater than 0.9. In conclusion, this study indicates the proposed combination of features and algorithms represents a valuable approach to automatically classify work activities in two NIOSH risk groups. These data confirm the potential of this methodology to assess the biomechanical risk to which subjects are exposed during their work activity.
- Published
- 2021
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47. Heart rate turbulence in obstructive sleep apnea syndrome: The effect of short-term CPAP therapy.
- Author
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D'Addio G, De Felice A, Donisi L, Braghiroli A, and Maniscalco M
- Subjects
- Continuous Positive Airway Pressure, Heart Rate, Humans, Sleep Apnea, Obstructive therapy
- Published
- 2021
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48. Design and Validation of an E-Textile-Based Wearable Sock for Remote Gait and Postural Assessment.
- Author
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Amitrano F, Coccia A, Ricciardi C, Donisi L, Cesarelli G, Capodaglio EM, and D'Addio G
- Subjects
- Humans, Walking, Clothing, Gait Analysis, Posture, Textiles, Wearable Electronic Devices
- Abstract
This paper presents a new wearable e-textile based system, named SWEET Sock, for biomedical signals remote monitoring. The system includes a textile sensing sock, an electronic unit for data transmission, a custom-made Android application for real-time signal visualization, and a software desktop for advanced digital signal processing. The device allows the acquisition of angular velocities of the lower limbs and plantar pressure signals, which are postprocessed to have a complete and schematic overview of patient's clinical status, regarding gait and postural assessment. In this work, device performances are validated by evaluating the agreement between the prototype and an optoelectronic system for gait analysis on a set of free walk acquisitions. Results show good agreement between the systems in the assessment of gait cycle time and cadence, while the presence of systematic and proportional errors are pointed out for swing and stance time parameters. Worse results were obtained in the comparison of spatial metrics. The "wearability" of the system and its comfortable use make it suitable to be used in domestic environment for the continuous remote health monitoring of de-hospitalized patients but also in the ergonomic assessment of health workers, thanks to its low invasiveness.
- Published
- 2020
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49. Machine learning to predict mortality after rehabilitation among patients with severe stroke.
- Author
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Scrutinio D, Ricciardi C, Donisi L, Losavio E, Battista P, Guida P, Cesarelli M, Pagano G, and D'Addio G
- Subjects
- Aged, Clinical Decision-Making, Female, Humans, Logistic Models, Male, Medicare, Middle Aged, Mortality, ROC Curve, Stroke mortality, United States, Algorithms, Machine Learning, Stroke etiology, Stroke Rehabilitation mortality
- Abstract
Stroke is among the leading causes of death and disability worldwide. Approximately 20-25% of stroke survivors present severe disability, which is associated with increased mortality risk. Prognostication is inherent in the process of clinical decision-making. Machine learning (ML) methods have gained increasing popularity in the setting of biomedical research. The aim of this study was twofold: assessing the performance of ML tree-based algorithms for predicting three-year mortality model in 1207 stroke patients with severe disability who completed rehabilitation and comparing the performance of ML algorithms to that of a standard logistic regression. The logistic regression model achieved an area under the Receiver Operating Characteristics curve (AUC) of 0.745 and was well calibrated. At the optimal risk threshold, the model had an accuracy of 75.7%, a positive predictive value (PPV) of 33.9%, and a negative predictive value (NPV) of 91.0%. The ML algorithm outperformed the logistic regression model through the implementation of synthetic minority oversampling technique and the Random Forests, achieving an AUC of 0.928 and an accuracy of 86.3%. The PPV was 84.6% and the NPV 87.5%. This study introduced a step forward in the creation of standardisable tools for predicting health outcomes in individuals affected by stroke.
- Published
- 2020
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50. [Effects of the school backpack on walking kinematics: a mechanical overload potentially causing musculoskeletal disorders in developmental age?]
- Author
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D'Addio G, Dionisi L, Pagano G, Mercogliano L, Cesarelli M, and Cesarelli G
- Subjects
- Adolescent, Equipment Design, Female, Gait Analysis instrumentation, Gait Analysis methods, Humans, Italy, Male, Musculoskeletal Development, Musculoskeletal Diseases etiology, Spinal Curvatures etiology, Wearable Electronic Devices, Biomechanical Phenomena physiology, Musculoskeletal Physiological Phenomena, Students, Walking physiology, Weight-Bearing physiology
- Abstract
Summary: Studies and reviews show that the vast majority of students around the world use heavy and uncomfortable backpacks, which could negatively affect their musculoskeletal development or at least generate a non-physiological functional overload. In this regard, non-invasive analyses were carried out on a sample of 150 healthy students aged between 14 and 15 years using a wearable inertial device for gait analysis: G-Walk System by BTS Bioengineering. Each student performed a gait analysis session consisting in a walk of 15 meters along a straight path in two different conditions: free walk and walk with backpack. A backpack with a sturdy backrest, wide and padded straps and abdominal belt with buckle was chosen. The weight inside the backpack was fixed at 9.3 kg in accordance with scientific studies conducted by Stefano Negrini of ISICO (Istituto Scientifico Italiano Colonna Vertebrale). Aim of this work is to understand, through an accurate analysis both instrumental and statistical, if we can talk about differential influence of musculoskeletal type generated by a school backpack full load compared to no backpack, trying to find out if and how much this affects walking both in terms of space-time parameters and detachment from normality values, and in terms of kinematic parameters such as pelvic rotations angles. Results showed a statistically significant difference between the space-time parameters computed in the two different study conditions, moreover a qualitative and quantitative difference was found for kinematic parameters too, which could imply potential musculoskeletal disorders associated with prolonged and long-lasting use of heavy and uncomfortable backpacks. This study has the ambition to raise awareness of this issue in order to extend legislative limits to the "working" environment of children, that is the school, as it is done for working environments adults (D. lgs 81/08 related to manual maintenance of loads)., Competing Interests: The authors of this article have no conflict of interests to disclose., (Copyright© by GIMLE.)
- Published
- 2020
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