15 results on '"Błaszczyński J"'
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2. The Governing Module for the Water Management Informative System
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Błaszczyński, J., Filimowski, J., Kubacka, D., and Łasut, E.
- Abstract
Informative system of water management is made for support of decision making for planning of water systems’ development. The main purpose of informative system is to store information about current state of water system and objects projected, forecasts of water demands and aims of water system. All information is divided into the modules of water economy tasks. The information is processed by mathematical models. The following main models are distinguished: quantity water resources, quality water resources, water users, water-economy balances, optimization of water intakes and sewage treatments localization, optimization of reservoirs and transfers system, flood protection system, support system for water-law allowance. Data base and governing module was made.
- Published
- 1988
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3. Monotonic variable consistency rough set approaches
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Błaszczyński, J., Salvatore Greco, Słowiński, R., and Szela̧g, M.
4. On variable consistency dominance-based rough set approaches
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Błaszczyński, J., Salvatore Greco, Słowiński, R., and Szela̧g, M.
5. Can AI Help Pediatricians? Diagnosing Kawasaki Disease Using DRSA.
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Siewert B, Błaszczyński J, Gowin E, Słowiński R, and Wysocki J
- Abstract
The DRSA method (dominance-based rough set approach) was used to create decision-making rules based on the results of physical examination and additional laboratory tests in the differential diagnosis of Kawasaki disease (KD), infectious mononucleosis and S. pyogenes pharyngitis in children. The study was conducted retrospectively. The search was based on the ICD-10 (International Classification of Diseases) codes of final diagnosis. Demographic and laboratory data from one Polish hospital (Poznan) were collected. Traditional statistical methods and the DRSA method were applied in data analysis. The algorithm formed 45 decision rules recognizing KD. The rules with the highest sensitivity (number of false negatives equals zero) were based on the presence of conjunctivitis and CRP (C-reactive Protein) ≥ 40.1 mg/L, thrombocytosis and ESR (Erythrocyte Sedimentation Rate) ≥ 77 mm/h; fair general condition and fever ≥ 5 days and rash; fair general condition and fever ≥ 5 days and conjunctivitis; fever ≥ 5 days and rash and CRP ≥ 7.05 mg/L. The DRSA analysis may be helpful in diagnosing KD at an early stage of the disease. It can be used even with a small amount of clinical or laboratory data.
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- 2021
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6. Structure-Activity Relationships of the Imidazolium Compounds as Antibacterials of Staphylococcus aureus and Pseudomonas aeruginosa .
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Pałkowski Ł, Karolak M, Błaszczyński J, Krysiński J, and Słowiński R
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- Structure-Activity Relationship, Anti-Bacterial Agents chemistry, Anti-Bacterial Agents pharmacology, Imidazoles chemistry, Imidazoles pharmacology, Pseudomonas aeruginosa growth & development, Staphylococcus aureus growth & development
- Abstract
This paper presents the results of structure-activity relationship (SAR) studies of 140 3,3'-(α,ω-dioxaalkan)bis(1-alkylimidazolium) chlorides. In the SAR analysis, the dominance-based rough set approach (DRSA) was used. For analyzed compounds, minimum inhibitory concentration (MIC) against strains of Staphylococcus aureus and Pseudomonas aeruginosa was determined. In order to perform the SAR analysis, a tabular information system was formed, in which tested compounds were described by means of condition attributes, characterizing the structure (substructure parameters and molecular descriptors) and their surface properties, and a decision attribute, classifying compounds with respect to values of MIC. DRSA allows to induce decision rules from data describing the compounds in terms of condition and decision attributes, and to rank condition attributes with respect to relevance using a Bayesian confirmation measure. Decision rules present the most important relationships between structure and surface properties of the compounds on one hand, and their antibacterial activity on the other hand. They also indicate directions of synthesizing more efficient antibacterial compounds. Moreover, the analysis showed differences in the application of various parameters for Gram-positive and Gram-negative strains, respectively.
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- 2021
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7. Application of Dominance-Based Rough Set Approach for Optimization of Pellets Tableting Process.
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Karolak M, Pałkowski Ł, Kubiak B, Błaszczyński J, Łunio R, Sawicki W, Słowiński R, and Krysiński J
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Multiple-unit pellet systems (MUPS) offer many advantages over conventional solid dosage forms both for the manufacturers and patients. Coated pellets can be efficiently compressed into MUPS in classic tableting process and enable controlled release of active pharmaceutical ingredient (APIs). For patients MUPS are divisible without affecting drug release and convenient to swallow. However, maintaining API release profile during the compression process can be a challenge. The aim of this work was to explore and discover relationships between data describing: composition, properties, process parameters (condition attributes) and quality (decision attribute, expressed as similarity factor f
2 ) of MUPS containing pellets with verapamil hydrochloride as API, by applying a dominance-based rough ret approach (DRSA) mathematical data mining technique. DRSA generated decision rules representing cause-effect relationships between condition attributes and decision attribute. Similar API release profiles from pellets before and after tableting can be ensured by proper polymer coating (Eudragit® NE, absence of ethyl cellulose), compression force higher than 6 kN, microcrystalline cellulose (Avicel® 102) as excipient and tablet hardness ≥42.4 N. DRSA can be useful for analysis of complex technological data. Decision rules with high values of confirmation measures can help technologist in optimal formulation development., Competing Interests: The authors and the companies Polpharma and Adamed Pharma declare no conflict of interest regarding publication of this paper.- Published
- 2020
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8. Machine-learned models using hematological inflammation markers in the prediction of short-term acute coronary syndrome outcomes.
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Pieszko K, Hiczkiewicz J, Budzianowski P, Rzeźniczak J, Budzianowski J, Błaszczyński J, Słowiński R, and Burchardt P
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- Aged, Hospital Mortality, Humans, Logistic Models, ROC Curve, Reproducibility of Results, Time Factors, Treatment Outcome, Acute Coronary Syndrome blood, Biomarkers blood, Inflammation blood, Machine Learning, Models, Theoretical
- Abstract
Background: Increased systemic and local inflammation play a vital role in the pathophysiology of acute coronary syndrome. This study aimed to assess the usefulness of selected machine learning methods and hematological markers of inflammation in predicting short-term outcomes of acute coronary syndrome (ACS)., Methods: We analyzed the predictive importance of laboratory and clinical features in 6769 hospitalizations of patients with ACS. Two binary classifications were considered: significant coronary lesion (SCL) or lack of SCL, and in-hospital death or survival. SCL was observed in 73% of patients. In-hospital mortality was observed in 1.4% of patients and it was higher in the case of patients with SCL. Ensembles of decision trees and decision rule models were trained to predict these classifications., Results: The best performing model for in-hospital mortality was based on the dominance-based rough set approach and the full set of laboratory as well as clinical features. This model achieved 81 ± 2.4% sensitivity and 81.1 ± 0.5% specificity in the detection of in-hospital mortality. The models trained for SCL performed considerably worse. The best performing model for detecting SCL achieved 56.9 ± 0.2% sensitivity and 66.9 ± 0.2% specificity. Dominance rough set approach classifier operating on the full set of clinical and laboratory features identifies presence or absence of diabetes, systolic and diastolic blood pressure and prothrombin time as having the highest confirmation measures (best predictive value) in the detection of in-hospital mortality. When we used the limited set of variables, neutrophil count, age, systolic and diastolic pressure and heart rate (taken at admission) achieved the high feature importance scores (provided by the gradient boosted trees classifier) as well as the positive confirmation measures (provided by the dominance-based rough set approach classifier)., Conclusions: Machine learned models can rely on the association between the elevated inflammatory markers and the short-term ACS outcomes to provide accurate predictions. Moreover, such models can help assess the usefulness of laboratory and clinical features in predicting the in-hospital mortality of ACS patients.
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- 2018
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9. Optimization of pellets manufacturing process using rough set theory.
- Author
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Pałkowski Ł, Karolak M, Kubiak B, Błaszczyński J, Słowiński R, Thommes M, Kleinebudde P, and Krysiński J
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- Decision Support Techniques, Excipients chemistry, Technology, Pharmaceutical methods
- Abstract
Pharmaceutical pellets are spherical agglomerates manufactured in extrusion/spheronization process. The composition of the pellets, the amount of active pharmaceutical ingredient (API) and the type of used excipients have an influence on the shape and quality of dosage form. A proper quality of the pellets can also be achieved by identifying the most important technological process parameters. In this paper, a knowledge discovery method, called dominance-based rough set approach (DRSA) has been applied to evaluate critical process parameters in pellets manufacturing. For this purpose, a set of condition attributes (amount of API; type and amount of excipient used; process parameters such as screw and rotation speed, time and temperature of spheronization) and a decision attribute (quality of the pellets defined by the aspect ratio) were used to set up an information system. The DRSA analysis allowed to induce decision rules containing information about process parameters which have a significant impact on the quality of manufactured pellets. Those rules can be used to optimize the process of pellets manufacturing., (Copyright © 2018 Elsevier B.V. All rights reserved.)
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- 2018
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10. Learning ensemble classifiers for diabetic retinopathy assessment.
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Saleh E, Błaszczyński J, Moreno A, Valls A, Romero-Aroca P, de la Riva-Fernández S, and Słowiński R
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- Clinical Decision-Making, Decision Trees, Diabetes Mellitus, Type 1 complications, Diabetes Mellitus, Type 2 complications, Diabetic Retinopathy etiology, Electronic Health Records, Humans, Predictive Value of Tests, Prognosis, Reproducibility of Results, Risk Assessment, Risk Factors, Time Factors, Decision Support Systems, Clinical, Decision Support Techniques, Diabetes Mellitus, Type 1 diagnosis, Diabetes Mellitus, Type 2 diagnosis, Diabetic Retinopathy diagnosis, Fuzzy Logic, Machine Learning
- Abstract
Diabetic retinopathy is one of the most common comorbidities of diabetes. Unfortunately, the recommended annual screening of the eye fundus of diabetic patients is too resource-consuming. Therefore, it is necessary to develop tools that may help doctors to determine the risk of each patient to attain this condition, so that patients with a low risk may be screened less frequently and the use of resources can be improved. This paper explores the use of two kinds of ensemble classifiers learned from data: fuzzy random forest and dominance-based rough set balanced rule ensemble. These classifiers use a small set of attributes which represent main risk factors to determine whether a patient is in risk of developing diabetic retinopathy. The levels of specificity and sensitivity obtained in the presented study are over 80%. This study is thus a first successful step towards the construction of a personalized decision support system that could help physicians in daily clinical practice., (Copyright © 2017 Elsevier B.V. All rights reserved.)
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- 2018
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11. With a little help from a computer: discriminating between bacterial and viral meningitis based on dominance-based rough set approach analysis.
- Author
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Gowin E, Januszkiewicz-Lewandowska D, Słowiński R, Błaszczyński J, Michalak M, and Wysocki J
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- Algorithms, C-Reactive Protein analysis, Child, Child, Preschool, Diagnosis, Differential, Female, Humans, Infant, Leukocyte Count, Male, Retrospective Studies, Diagnosis, Computer-Assisted methods, Meningitis, Bacterial diagnosis, Meningitis, Viral blood, Meningitis, Viral diagnosis
- Abstract
Differential Diagnosis of bacterial and viral meningitis remains an important clinical problem. A number of methods to assist in the diagnoses of meningitis have been developed, but none of them have been found to have high specificity with 100% sensitivity.We conducted a retrospective analysis of the medical records of 148 children hospitalized in St. Joseph Children's Hospital in Poznań. In this study, we applied for the first time the original methodology of dominance-based rough set approach (DRSA) to diagnostic patterns of meningitis data and represented them by decision rules useful in discriminating between bacterial and viral meningitis. The induction algorithm is called VC-DomLEM; it has been implemented as software package called jMAF (http://www.cs.put.poznan.pl/jblaszczynski/Site/jRS.html), based on java Rough Set (jRS) library.In the studied group, there were 148 patients (78 boys and 70 girls), and the mean age was 85 months. We analyzed 14 attributes, of which only 4 were used to generate the 6 rules, with C-reactive protein (CRP) being the most valuable.Factors associated with bacterial meningitis were: CRP level ≥86 mg/L, number of leukocytes in cerebrospinal fluid (CSF) ≥4481 μL, symptoms duration no longer than 2 days, or age less than 1 month. Factors associated with viral meningitis were CRP level not higher than 19 mg/L, or CRP level not higher than 84 mg/L in a patient older than 11 months with no more than 1100 μL leukocytes in CSF.We established the minimum set of attributes significant for classification of patients with meningitis. This is new set of rules, which, although intuitively anticipated by some clinicians, has not been formally demonstrated until now.
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- 2017
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12. Robustness analysis of a green chemistry-based model for the classification of silver nanoparticles synthesis processes.
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Cinelli M, Coles SR, Nadagouda MN, Błaszczyński J, Słowiński R, Varma RS, and Kirwan K
- Abstract
This paper proposes a robustness analysis based on Multiple Criteria Decision Aiding (MCDA). The ensuing model was used to assess the implementation of green chemistry principles in the synthesis of silver nanoparticles. Its recommendations were also compared to an earlier developed model for the same purpose to investigate concordance between the models and potential decision support synergies. A three-phase procedure was adopted to achieve the research objectives. Firstly, an ordinal ranking of the evaluation criteria used to characterize the implementation of green chemistry principles was identified through relative ranking analysis. Secondly, a structured selection process for an MCDA classification method was conducted, which ensued in the identification of Stochastic Multi-Criteria Acceptability Analysis (SMAA). Lastly, the agreement of the classifications by the two MCDA models and the resulting synergistic role of decision recommendations were studied. This comparison showed that the results of the two models agree between 76% and 93% of the simulation set-ups and it confirmed that different MCDA models provide a more inclusive and transparent set of recommendations. This integrative research confirmed the beneficial complementary use of MCDA methods to aid responsible development of nanosynthesis, by accounting for multiple objectives and helping communication of complex information in a comprehensive and traceable format, suitable for stakeholders and/or decision-makers with diverse backgrounds.
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- 2017
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13. Prediction of antifungal activity of gemini imidazolium compounds.
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Pałkowski Ł, Błaszczyński J, Skrzypczak A, Błaszczak J, Nowaczyk A, Wróblewska J, Kożuszko S, Gospodarek E, Słowiński R, and Krysiński J
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- Antifungal Agents chemistry, Calcitriol chemistry, Calcitriol pharmacology, Candida albicans drug effects, Candida albicans pathogenicity, Candidiasis microbiology, Drug Resistance, Fungal genetics, Humans, Imidazoles chemistry, Structure-Activity Relationship, Antifungal Agents pharmacology, Calcitriol analogs & derivatives, Candidiasis drug therapy, Imidazoles pharmacology
- Abstract
The progress of antimicrobial therapy contributes to the development of strains of fungi resistant to antimicrobial drugs. Since cationic surfactants have been described as good antifungals, we present a SAR study of a novel homologous series of 140 bis-quaternary imidazolium chlorides and analyze them with respect to their biological activity against Candida albicans as one of the major opportunistic pathogens causing a wide spectrum of diseases in human beings. We characterize a set of features of these compounds, concerning their structure, molecular descriptors, and surface active properties. SAR study was conducted with the help of the Dominance-Based Rough Set Approach (DRSA), which involves identification of relevant features and relevant combinations of features being in strong relationship with a high antifungal activity of the compounds. The SAR study shows, moreover, that the antifungal activity is dependent on the type of substituents and their position at the chloride moiety, as well as on the surface active properties of the compounds. We also show that molecular descriptors MlogP, HOMO-LUMO gap, total structure connectivity index, and Wiener index may be useful in prediction of antifungal activity of new chemical compounds.
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- 2015
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14. Antimicrobial activity and SAR study of new gemini imidazolium-based chlorides.
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Pałkowski Ł, Błaszczyński J, Skrzypczak A, Błaszczak J, Kozakowska K, Wróblewska J, Kożuszko S, Gospodarek E, Krysiński J, and Słowiński R
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- Anti-Infective Agents chemical synthesis, Candida drug effects, Gram-Negative Bacteria drug effects, Gram-Positive Bacteria drug effects, Imidazoles chemical synthesis, Microbial Sensitivity Tests, Structure-Activity Relationship, Anti-Infective Agents chemistry, Anti-Infective Agents pharmacology, Chlorides chemistry, Imidazoles chemistry, Imidazoles pharmacology
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A series of 70 new 3,3'(α,ω-dioxaalkyl)bis(1-alkylimidazolium) chlorides were synthesized. They were characterized with respect to surface active properties and antimicrobial activity against the following pathogens: Staphylococcus aureus, Enterococcus faecalis, Acinetobacter baumannii, Escherichia coli, Klebsiella pneumoniae, Enterobacter cloacae, Pseudomonas aeruginosa, Candida krusei, and Candida albicans. In this article, besides description of the synthesis, we characterize a set of features of these compounds, concerning their structure (described by the length of the dioxaalkan spacer and the length of the alkyl substituent in the aromatic ring) and surface active properties (critical micelle concentration, value of surface tension at critical micelle concentration, value of surface excess, molecular area of a single particle, and free energy of adsorption of molecule). Then, we present a SAR study for Staphylococcus aureus, as one of the most widespread pathogenic strains, conducted with the help of the Dominance-based Rough Set Approach (DRSA), that involves identification of relevant features and relevant combinations of features being in strong relationship with a high antimicrobial activity of the compounds. The SAR study shows, moreover, that the antimicrobial activity is dependent on the type of substituents and their position at the chloride moiety, as well as on the surface active properties of the compounds., (© 2013 John Wiley & Sons A/S.)
- Published
- 2014
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15. Readmission to an intensive care unit after cardiac surgery: reasons and outcomes.
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Jarząbek R, Bugajski P, Greberski K, Błaszczyński J, Słowińska-Jarząbek B, and Kalawski R
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- Adult, Aged, Aged, 80 and over, Cardiac Surgical Procedures adverse effects, Female, Humans, Length of Stay statistics & numerical data, Male, Middle Aged, Postoperative Complications etiology, Retrospective Studies, Risk Factors, Time Factors, Cardiac Surgical Procedures statistics & numerical data, Intensive Care Units, Patient Discharge statistics & numerical data, Patient Readmission statistics & numerical data, Postoperative Complications epidemiology
- Abstract
Background: Intensive care unit (ICU) readmission after cardiac surgery is believed to be associated with higher in-hospital mortality and may predict poor outcomes. ICU readmissions use resources and increase treatment costs., Aim: To determine reasons for readmission to ICU, evaluate outcomes in these patients, and identify factors predisposing to the need for readmission to ICU., Methods: We retrospectively investigated a total of 2076 consecutive adult patients who underwent either isolated coronary artery bypass grafting or a valve procedure or combination of both and were discharged from our ICU between January 2008 and December 2010. To identify the factors that increase the risk of readmission to ICU, we used the dominance-based rough set approach (DRSA) which is a methodology of knowledge discovery from data. The knowledge has the form of "if... then..." decision rules relating patient characteristics to the risk of readmission to ICU., Results: Of 2076 patients discharged from ICU, 56 (2.7%) required a second stay in the ICU (study group) while 2020 patients needed no readmission to ICU (control group). The main causes of readmission were haemodynamic instability (28.6%, n = 16), respiratory failure (23.2%, n = 13), and cardiac tamponade or bleeding (23.2%, n = 13). The mean length of stay (LOS) in the general cardiac ward after primary discharge from ICU until readmission was 3.5 ± 4.2 days. The mean LOS in ICU after readmission was 12.5 ± 21.2 days. Postoperative complications occurred more frequently in readmitted patients (10.2% vs. 48.2%, p < 0.0001). In-hospital mortality was significantly higher in the study group (15 [26.8%] vs. 23 [1.1%] patients, p < 0.0001). As a result of applying the DRSA methodology, the algorithm generated decision rules categorizing patients into high and low ICU readmission risk. Advanced age, non-elective surgery and the length of initial ICU stay after the surgery were the factors of greatest importance for the correct categorisation of patients in the study group., Conclusions: The most common cause of readmission to ICU is haemodynamic instability. Postoperative complication and in-hospital mortality rates are significantly higher in patients readmitted to ICU. Factors most commonly predisposing to readmission to ICU after cardiac surgery included advanced patient age, non-elective surgery, and longer initial stay in ICU after the surgery.
- Published
- 2014
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