17 results on '"Sarrafzadeh, Majid"'
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2. A Self-supervised Framework for Improved Data-Driven Monitoring of Stress via Multi-modal Passive Sensing
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Fazeli, Shayan, Levine, Lionel, Beikzadeh, Mehrab, Mirzasoleiman, Baharan, Zadeh, Bita, Peris, Tara, and Sarrafzadeh, Majid
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FOS: Computer and information sciences ,Computer Science - Machine Learning ,Machine Learning (cs.LG) - Abstract
Recent advances in remote health monitoring systems have significantly benefited patients and played a crucial role in improving their quality of life. However, while physiological health-focused solutions have demonstrated increasing success and maturity, mental health-focused applications have seen comparatively limited success in spite of the fact that stress and anxiety disorders are among the most common issues people deal with in their daily lives. In the hopes of furthering progress in this domain through the development of a more robust analytic framework for the measurement of indicators of mental health, we propose a multi-modal semi-supervised framework for tracking physiological precursors of the stress response. Our methodology enables utilizing multi-modal data of differing domains and resolutions from wearable devices and leveraging them to map short-term episodes to semantically efficient embeddings for a given task. Additionally, we leverage an inter-modality contrastive objective, with the advantages of rendering our framework both modular and scalable. The focus on optimizing both local and global aspects of our embeddings via a hierarchical structure renders transferring knowledge and compatibility with other devices easier to achieve. In our pipeline, a task-specific pooling based on an attention mechanism, which estimates the contribution of each modality on an instance level, computes the final embeddings for observations. This additionally provides a thorough diagnostic insight into the data characteristics and highlights the importance of signals in the broader view of predicting episodes annotated per mental health status. We perform training experiments using a corpus of real-world data on perceived stress, and our results demonstrate the efficacy of the proposed approach in performance improvements.
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- 2023
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3. Harnessing the Power of Smart and Connected Health to Tackle COVID-19: IoT, AI, Robotics, and Blockchain for a Better World
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Firouzi, Farshad, Farahani, Bahar, Daneshmand, Mahmoud, Grise, Kathy, Song, JaeSeung, Saracco, Roberto, Wang, Lucy Lu, Lo, Kyle, Angelov, Plamen, Almeida Soares, Eduardo, Po-Shen Loh, Talebpour, Zeynab, Moradi, Reza, Mohsen Goodarzi, Haleh Ashraf, Mohammad Talebpour, Alireza Talebpour, Luca Romeo, Rupam Das, Hadi Heidari, Dana Pasquale, James Moody, James Moodys, Chris Woods, Erich S. Huang, Payam Barnaghi, Sarrafzadeh, Majid, Ron Li, Kristen L Beck, Olexandr Isayev, Nakmyoung Sung, and Alan Luo
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blockchain ,Technology ,Artificial intelligence ,Computer science ,Internet of Things ,Big data ,Wearable computer ,THINGS ,computer.software_genre ,Artificial intelligence (AI) ,Chatbot ,wearable ,Engineering ,big data ,digital twin ,media_common ,robotics ,Vaccines ,Computer Science, Information Systems ,CHALLENGES ,healthcare ,Computer Science Applications ,WEARABLE DEVICES ,Hardware and Architecture ,Medical services ,Connected health ,Telecommunications ,Robots ,Information Systems ,Computer Networks and Communications ,media_common.quotation_subject ,0805 Distributed Computing ,Ingenuity ,1005 Communications Technologies ,INTERNET ,Pandemics ,Science & Technology ,business.industry ,pandemic ,COVID-19 ,Engineering, Electrical & Electronic ,Data science ,Knowledge acquisition ,Internet of Things (IoT) ,Information and Communications Technology ,Computer Science ,Signal Processing ,Robot ,eHealth ,business ,computer - Abstract
As COVID-19 hounds the world, the common cause of finding a swift solution to manage the pandemic has brought together researchers, institutions, governments, and society at large. The Internet of Things (IoT), Artificial Intelligence (AI) — including Machine Learning (ML) and Big Data analytics — as well as Robotics and Blockchain, are the four decisive areas of technological innovation that have been ingenuity harnessed to fight this pandemic and future ones. While these highly interrelated smart and connected health technologies cannot resolve the pandemic overnight and may not be the only answer to the crisis, they can provide greater insight into the disease and support frontline efforts to prevent and control the pandemic. This paper provides a blend of discussions on the contribution of these digital technologies, propose several complementary and multidisciplinary techniques to combat COVID-19, offer opportunities for more holistic studies, and accelerate knowledge acquisition and scientific discoveries in pandemic research. First, four areas where IoT can contribute are discussed, namely, i) tracking and tracing, ii) Remote Patient Monitoring (RPM) by Wearable IoT (WIoT), iii) Personal Digital Twins (PDT), and iv) real-life use case: ICT/IoT solution in Korea. Second, the role and novel applications of AI are explained, namely: i) diagnosis and prognosis, ii) risk prediction, iii) vaccine and drug development, iv) research dataset, v) early warnings and alerts, vi) social control and fake news detection, and vii) communication and chatbot. Third, the main uses of robotics and drone technology are analyzed, including i) crowd surveillance, ii) public announcements, iii) screening and diagnosis, and iv) essential supply delivery. Finally, we discuss how Distributed Ledger Technologies (DLTs), of which blockchain is a common example, can be combined with other technologies for tackling COVID-19.
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- 2021
4. Beyond Labels: Visual Representations for Bone Marrow Cell Morphology Recognition
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Fazeli, Shayan, Samiei, Alireza, Lee, Thomas D., and Sarrafzadeh, Majid
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FOS: Computer and information sciences ,Computer Science - Machine Learning ,Computer Vision and Pattern Recognition (cs.CV) ,Computer Science - Computer Vision and Pattern Recognition ,Machine Learning (cs.LG) - Abstract
Analyzing and inspecting bone marrow cell cytomorphology is a critical but highly complex and time-consuming component of hematopathology diagnosis. Recent advancements in artificial intelligence have paved the way for the application of deep learning algorithms to complex medical tasks. Nevertheless, there are many challenges in applying effective learning algorithms to medical image analysis, such as the lack of sufficient and reliably annotated training datasets and the highly class-imbalanced nature of most medical data. Here, we improve on the state-of-the-art methodologies of bone marrow cell recognition by deviating from sole reliance on labeled data and leveraging self-supervision in training our learning models. We investigate our approach's effectiveness in identifying bone marrow cell types. Our experiments demonstrate significant performance improvements in conducting different bone marrow cell recognition tasks compared to the current state-of-the-art methodologies.
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- 2022
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5. Autopopulus: A Novel Framework for Autoencoder Imputation on Large Clinical Datasets
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Zamanzadeh, Davina J, Petousis, Panayiotis, Davis, Tyler A, Nicholas, Susanne B, Norris, Keith C, Tuttle, Katherine R, Bui, Alex AT, and Sarrafzadeh, Majid
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Kidney Disease ,Uncertainty ,Datasets as Topic ,Bioengineering ,Article ,8.4 Research design and methodologies (health services) ,Good Health and Well Being ,Research Design ,Disease Progression ,Electronic Health Records ,Humans ,Renal Insufficiency ,Patient Safety ,Generic health relevance ,Chronic ,Renal Insufficiency, Chronic ,Software ,Health and social care services research - Abstract
The adoption of electronic health records (EHRs) has made patient data increasingly accessible, precipitating the development of various clinical decision support systems and data-driven models to help physicians. However, missing data are common in EHR-derived datasets, which can introduce significant uncertainty, if not invalidating the use of a predictive model. Machine learning (ML)-based imputation methods have shown promise in various domains for the task of estimating values and reducing uncertainty to the point that a predictive model can be employed. We introduce Autopopulus, a novel framework that enables the design and evaluation of various autoencoder architectures for efficient imputation on large datasets. Autopopulus implements existing autoencoder methods as well as a new technique that outputs a range of estimated values (rather than point estimates), and demonstrates a workflow that helps users make an informed decision on an appropriate imputation method. To further illustrate Autopopulus' utility, we use it to identify not only which imputation methods can most accurately impute on a large clinical dataset, but to also identify the imputation methods that enable downstream predictive models to achieve the best performance for prediction of chronic kidney disease (CKD) progression.
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- 2021
6. COVID-19 and Big Data: Multi-faceted Analysis for Spatio-temporal Understanding of the Pandemic with Social Media Conversations
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Fazeli, Shayan, Zamanzadeh, Davina, Ovalle, Anaelia, Nguyen, Thu, Gee, Gilbert, and Sarrafzadeh, Majid
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Social and Information Networks (cs.SI) ,FOS: Computer and information sciences ,Computer Science - Computation and Language ,Computer Science - Social and Information Networks ,Computation and Language (cs.CL) - Abstract
COVID-19 has been devastating the world since the end of 2019 and has continued to play a significant role in major national and worldwide events, and consequently, the news. In its wake, it has left no life unaffected. Having earned the world's attention, social media platforms have served as a vehicle for the global conversation about COVID-19. In particular, many people have used these sites in order to express their feelings, experiences, and observations about the pandemic. We provide a multi-faceted analysis of critical properties exhibited by these conversations on social media regarding the novel coronavirus pandemic. We present a framework for analysis, mining, and tracking the critical content and characteristics of social media conversations around the pandemic. Focusing on Twitter and Reddit, we have gathered a large-scale dataset on COVID-19 social media conversations. Our analyses cover tracking potential reports on virus acquisition, symptoms, conversation topics, and language complexity measures through time and by region across the United States. We also present a BERT-based model for recognizing instances of hateful tweets in COVID-19 conversations, which achieves a lower error-rate than the state-of-the-art performance. Our results provide empirical validation for the effectiveness of our proposed framework and further demonstrate that social media data can be efficiently leveraged to provide public health experts with inexpensive but thorough insight over the course of an outbreak.
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- 2021
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7. Real-Time Decentralized knowledge Transfer at the Edge
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Goldstein, Orpaz, Kachuee, Mohammad, Shiell, Derek, and Sarrafzadeh, Majid
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FOS: Computer and information sciences ,Computer Science - Machine Learning ,Machine Learning (cs.LG) - Abstract
The proliferation of edge networks creates islands of learning agents working on local streams of data. Transferring knowledge between these agents in real-time without exposing private data allows for collaboration to decrease learning time and increase model confidence. Incorporating knowledge from data that a local model did not see creates an ability to debias a local model or add to classification abilities on data never before seen. Transferring knowledge in a selective decentralized approach enables models to retain their local insights, allowing for local flavors of a machine learning model. This approach suits the decentralized architecture of edge networks, as a local edge node will serve a community of learning agents that will likely encounter similar data. We propose a method based on knowledge distillation for pairwise knowledge transfer pipelines from models trained on non-i.i.d. data and compare it to other popular knowledge transfer methods. Additionally, we test different scenarios of knowledge transfer network construction and show the practicality of our approach. Our experiments show knowledge transfer using our model outperforms standard methods in a real-time transfer scenario.
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- 2020
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8. Group-Connected Multilayer Perceptron Networks
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Kachuee, Mohammad, Darabi, Sajad, Fazeli, Shayan, and Sarrafzadeh, Majid
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FOS: Computer and information sciences ,Computer Science - Machine Learning ,Statistics - Machine Learning ,Computer Science - Neural and Evolutionary Computing ,Machine Learning (stat.ML) ,Neural and Evolutionary Computing (cs.NE) ,Machine Learning (cs.LG) - Abstract
Despite the success of deep learning in domains such as image, voice, and graphs, there has been little progress in deep representation learning for domains without a known structure between features. For instance, a tabular dataset of different demographic and clinical factors where the feature interactions are not given as a prior. In this paper, we propose Group-Connected Multilayer Perceptron (GMLP) networks to enable deep representation learning in these domains. GMLP is based on the idea of learning expressive feature combinations (groups) and exploiting them to reduce the network complexity by defining local group-wise operations. During the training phase, GMLP learns a sparse feature grouping matrix using temperature annealing softmax with an added entropy loss term to encourage the sparsity. Furthermore, an architecture is suggested which resembles binary trees, where group-wise operations are followed by pooling operations to combine information; reducing the number of groups as the network grows in depth. To evaluate the proposed method, we conducted experiments on different real-world datasets covering various application areas. Additionally, we provide visualizations on MNIST and synthesized data. According to the results, GMLP is able to successfully learn and exploit expressive feature combinations and achieve state-of-the-art classification performance on different datasets.
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- 2019
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9. Target-Focused Feature Selection Using a Bayesian Approach
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Goldstein, Orpaz, Kachuee, Mohammad, Karkkainen, Kimmo, and Sarrafzadeh, Majid
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FOS: Computer and information sciences ,Computer Science - Machine Learning ,Statistics - Machine Learning ,Machine Learning (stat.ML) ,Machine Learning (cs.LG) - Abstract
In many real-world scenarios where data is high dimensional, test time acquisition of features is a non-trivial task due to costs associated with feature acquisition and evaluating feature value. The need for highly confident models with an extremely frugal acquisition of features can be addressed by allowing a feature selection method to become target aware. We introduce an approach to feature selection that is based on Bayesian learning, allowing us to report target-specific levels of uncertainty, false positive, and false negative rates. In addition, measuring uncertainty lifts the restriction on feature selection being target agnostic, allowing for feature acquisition based on a single target of focus out of many. We show that acquiring features for a specific target is at least as good as common linear feature selection approaches for small non-sparse datasets, and surpasses these when faced with real-world healthcare data that is larger in scale and in sparseness.
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- 2019
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10. Opportunistic Learning: Budgeted Cost-Sensitive Learning from Data Streams
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Kachuee, Mohammad, Goldstein, Orpaz, Karkkainen, Kimmo, Darabi, Sajad, and Sarrafzadeh, Majid
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FOS: Computer and information sciences ,Computer Science - Machine Learning ,Artificial Intelligence (cs.AI) ,Computer Science - Artificial Intelligence ,Statistics - Machine Learning ,Computer Science - Neural and Evolutionary Computing ,Machine Learning (stat.ML) ,Neural and Evolutionary Computing (cs.NE) ,Machine Learning (cs.LG) - Abstract
In many real-world learning scenarios, features are only acquirable at a cost constrained under a budget. In this paper, we propose a novel approach for cost-sensitive feature acquisition at the prediction-time. The suggested method acquires features incrementally based on a context-aware feature-value function. We formulate the problem in the reinforcement learning paradigm, and introduce a reward function based on the utility of each feature. Specifically, MC dropout sampling is used to measure expected variations of the model uncertainty which is used as a feature-value function. Furthermore, we suggest sharing representations between the class predictor and value function estimator networks. The suggested approach is completely online and is readily applicable to stream learning setups. The solution is evaluated on three different datasets including the well-known MNIST dataset as a benchmark as well as two cost-sensitive datasets: Yahoo Learning to Rank and a dataset in the medical domain for diabetes classification. According to the results, the proposed method is able to efficiently acquire features and make accurate predictions., Comment: https://openreview.net/forum?id=S1eOHo09KX
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- 2019
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11. Additional file 1 of Identifying predictors for postoperative clinical outcome in lumbar spinal stenosis patients using smart-shoe technology
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Sunghoon I. Lee, Campion, Andrew, Huang, Alex, Eunjeong Park, Garst, Jordan H., Jahanforouz, Nima, Espinal, Marie, Siero, Tiffany, Pollack, Sophie, Afridi, Marwa, Meelod Daneshvar, Ghias, Saif, Sarrafzadeh, Majid, and Lu, Daniel C.
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Appendix. (PDF 67 kb)
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- 2017
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12. A Combination of Indoor Localization and Wearable Sensor–Based Physical Activity Recognition to Assess Older Patients Undergoing Subacute Rehabilitation: Baseline Study Results
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Ramezani, Ramin, Zhang, Wenhao, Xie, Zhuoer, Shen, John, Elashoff, David, Roberts, Pamela, Stanton, Annette, Eslami, Michelle, Wenger, Neil, Sarrafzadeh, Majid, and Naeim, Arash
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Male ,Computer science ,Population ,Wearable computer ,Health Informatics ,Information technology ,frailty ,Fitness Trackers ,Machine learning ,computer.software_genre ,Cohort Studies ,Smartwatch ,Activity recognition ,Wearable Electronic Devices ,bluetooth low energy beacons ,Humans ,education ,Exercise ,Geriatric Assessment ,monitoring ambulatory ,Wearable technology ,Aged ,Aged, 80 and over ,Original Paper ,education.field_of_study ,Chi-Square Distribution ,Ambient intelligence ,business.industry ,Rehabilitation ,Activity tracker ,remote sensing technology ,Middle Aged ,T58.5-58.64 ,Los Angeles ,smartwatches ,Female ,Artificial intelligence ,Public aspects of medicine ,RA1-1270 ,business ,computer - Abstract
BackgroundHealth care, in recent years, has made great leaps in integrating wireless technology into traditional models of care. The availability of ubiquitous devices such as wearable sensors has enabled researchers to collect voluminous datasets and harness them in a wide range of health care topics. One of the goals of using on-body wearable sensors has been to study and analyze human activity and functional patterns, thereby predicting harmful outcomes such as falls. It can also be used to track precise individual movements to form personalized behavioral patterns, to standardize the concept of frailty, well-being/independence, etc. Most wearable devices such as activity trackers and smartwatches are equipped with low-cost embedded sensors that can provide users with health statistics. In addition to wearable devices, Bluetooth low-energy sensors known as BLE beacons have gained traction among researchers in ambient intelligence domain. The low cost and durability of newer versions have made BLE beacons feasible gadgets to yield indoor localization data, an adjunct feature in human activity recognition. In the studies by Moatamed et al and the patent application by Ramezani et al, we introduced a generic framework (Sensing At-Risk Population) that draws on the classification of human movements using a 3-axial accelerometer and extracting indoor localization using BLE beacons, in concert. ObjectiveThe study aimed to examine the ability of combination of physical activity and indoor location features, extracted at baseline, on a cohort of 154 rehabilitation-dwelling patients to discriminate between subacute care patients who are re-admitted to the hospital versus the patients who are able to stay in a community setting. MethodsWe analyzed physical activity sensor features to assess activity time and intensity. We also analyzed activities with regard to indoor localization. Chi-square and Kruskal-Wallis tests were used to compare demographic variables and sensor feature variables in outcome groups. Random forests were used to build predictive models based on the most significant features. ResultsStanding time percentage (P
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- 2019
13. Objectively quantifying walking ability in degenerative spinal disorder patients using sensor equipped smart shoes
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Lee, Sunghoon Ivan, Park, Eunjeong, Huang, Alex, Mortazavi, Bobak, Garst, Jordan Hayward, Jahanforouz, Nima, Espinal, Marie, Siero, Tiffany, Pollack, Sophie, Afridi, Marwa, Daneshvar, Meelod, Ghias, Saif, Lu, Daniel C, and Sarrafzadeh, Majid
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Adult ,Male ,Smart shoes ,Monitoring ,Spinal cord disorder ,Biomedical Engineering ,Bioengineering ,Walking ,Pressure mapping ,Medical and Health Sciences ,Machine Learning ,Spinal Stenosis ,Spatio-Temporal Analysis ,Engineering ,Pressure ,Humans ,Postoperative Period ,Physiologic ,Gait ,Aged ,Lumbar Vertebrae ,Functional level ,Rehabilitation ,Middle Aged ,Lumbar spinal stenosis ,Shoes ,Preoperative Period ,Physical Sciences ,Self-paced walking test ,Walking ability ,Female - Abstract
Lumbar spinal stenosis (LSS) is a condition associated with the degeneration of spinal disks in the lower back. A significant majority of the elderly population experiences LSS, and the number is expected to grow. The primary objective of medical treatment for LSS patients has focused on improving functional outcomes (e.g., walking ability) and thus, an accurate, objective, and inexpensive method to evaluate patients' functional levels is in great need. This paper aims to quantify the functional level of LSS patients by analyzing their clinical information and their walking ability from a 10 m self-paced walking test using a pair of sensorized shoes. Machine learning algorithms were used to estimate the Oswestry Disability Index, a clinically well-established functional outcome, from a total of 29 LSS patients. The estimated ODI scores showed a significant correlation to the reported ODI scores with a Pearson correlation coefficient (r) of 0.81 and p
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- 2016
14. Effectiveness of Remote Patient Monitoring After Discharge of Hospitalized Patients With Heart Failure: The Better Effectiveness After Transition -- Heart Failure (BEAT-HF) Randomized Clinical Trial
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Ong, Michael K, Romano, Patrick S, Edgington, Sarah, Aronow, Harriet U, Auerbach, Andrew D, Black, Jeanne T, De Marco, Teresa, Escarce, Jose J, Evangelista, Lorraine S, Hanna, Barbara, Ganiats, Theodore G, Greenberg, Barry H, Greenfield, Sheldon, Kaplan, Sherrie H, Kimchi, Asher, Liu, Honghu, Lombardo, Dawn, Mangione, Carol M, Sadeghi, Bahman, Sadeghi, Banafsheh, Sarrafzadeh, Majid, Tong, Kathleen, Fonarow, Gregg C, and Better Effectiveness After Transition–Heart Failure (BEAT-HF) Research Group
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Male ,Comparative Effectiveness Research ,Monitoring ,Clinical Trials and Supportive Activities ,Clinical Sciences ,Cardiovascular ,Patient Readmission ,7.3 Management and decision making ,Clinical Research ,Opthalmology and Optometry ,Odds Ratio ,80 and over ,Humans ,Telemetry ,Prospective Studies ,Physiologic ,Proportional Hazards Models ,Aged ,Heart Failure ,Epidemiologic ,Better Effectiveness After Transition–Heart Failure (BEAT-HF) Research Group ,Middle Aged ,Health Services ,Patient Discharge ,United States ,Confounding Factors ,Telephone ,Good Health and Well Being ,Heart Disease ,Cost Effectiveness Research ,Research Design ,Quality of Life ,Public Health and Health Services ,Female ,Management of diseases and conditions - Abstract
ImportanceIt remains unclear whether telemonitoring approaches provide benefits for patients with heart failure (HF) after hospitalization.ObjectiveTo evaluate the effectiveness of a care transition intervention using remote patient monitoring in reducing 180-day all-cause readmissions among a broad population of older adults hospitalized with HF.Design, setting, and participantsWe randomized 1437 patients hospitalized for HF between October 12, 2011, and September 30, 2013, to the intervention arm (715 patients) or to the usual care arm (722 patients) of the Better Effectiveness After Transition-Heart Failure (BEAT-HF) study and observed them for 180 days. The dates of our study analysis were March 30, 2014, to October 1, 2015. The setting was 6 academic medical centers in California. Participants were hospitalized individuals 50 years or older who received active treatment for decompensated HF.InterventionsThe intervention combined health coaching telephone calls and telemonitoring. Telemonitoring used electronic equipment that collected daily information about blood pressure, heart rate, symptoms, and weight. Centralized registered nurses conducted telemonitoring reviews, protocolized actions, and telephone calls.Main outcomes and measuresThe primary outcome was readmission for any cause within 180 days after discharge. Secondary outcomes were all-cause readmission within 30 days, all-cause mortality at 30 and 180 days, and quality of life at 30 and 180 days.ResultsAmong 1437 participants, the median age was 73 years. Overall, 46.2% (664 of 1437) were female, and 22.0% (316 of 1437) were African American. The intervention and usual care groups did not differ significantly in readmissions for any cause 180 days after discharge, which occurred in 50.8% (363 of 715) and 49.2% (355 of 722) of patients, respectively (adjusted hazard ratio, 1.03; 95% CI, 0.88-1.20; P = .74). In secondary analyses, there were no significant differences in 30-day readmission or 180-day mortality, but there was a significant difference in 180-day quality of life between the intervention and usual care groups. No adverse events were reported.Conclusions and relevanceAmong patients hospitalized for HF, combined health coaching telephone calls and telemonitoring did not reduce 180-day readmissions.Trial registrationclinicaltrials.gov Identifier: NCT01360203.
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- 2016
15. Use of Multivariate Linear Regression Models and Support Vector Regression Models to Predict Outcome in Patients Undergoing Surgery for Cervical Spondylotic Myelopathy
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Hoffman, Haydn, Li, Charles, Bs Sunghoon, Lee, Ivan, Garst, Jordan, Espinal, Marie, Jahanforouz, Nima, Ghavamrezaii Amir, Sarrafzadeh, Majid, and Lu, Daniel C
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- 2014
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16. Dynamic self-adaptive remote health monitoring system for diabetics
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Myung-Kyung Suh, Suh, Myung-Kyung, Moin, Tannaz, Woodbridge, Jonathan, Lan, Mars, Ghasemzadeh, Hassan, Bui, Alex, Ahmadi, Sheila, and Sarrafzadeh, Majid
- Abstract
Diabetes is the seventh leading cause of death in the United States. In 2010, about 1.9 million new cases of diabetes were diagnosed in people aged 20 years or older. Remote health monitoring systems can help diabetics and their healthcare professionals monitor health-related measurements by providing real-time feedback. However, data-driven methods to dynamically prioritize and generate tasks are not well investigated in the remote health monitoring. This paper presents a task optimization technique used in WANDA (Weight and Activity with Blood Pressure and Other Vital Signs); a wireless health project that leverages sensor technology and wireless communication to monitor the health status of patients with diabetes. WANDA applies data analytics in real-time to improving the quality of care. The developed algorithm minimizes the number of daily tasks required by diabetic patients using association rules that satisfies a minimum support threshold. Each of these tasks maximizes information gain, thereby improving the overall level of care. Experimental results show that the developed algorithm can reduce the number of tasks up to 28.6% with minimum support 0.95, minimum confidence 0.97 and high efficiency.
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- 2012
17. Remote Patient Management After Discharge of Hospitalized Heart Failure Patients: The Better Effectiveness After Transition - Heart Failure Study
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Ong, Michael K., Romano, Patrick S., Edgington, Sarah, Auerbach, Andrew D., Aronow, Harriet U., Black, Jeanne T., Marco, Teresa, Escarce, Jose J., Lorraine Evangelista, Ganiats, Theodore G., Greenberg, Barry, Greenfield, Sheldon, Kaplan, Sherrie H., Kimchi, Asher, Liu, Honghu, Lombardo, Dawn, Mangione, Carol M., Sarrafzadeh, Majid, Tong, Kathleen, and Fonarow, Gregg C.
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Transitions of care ,Cardiovascular System & Hematology ,Clinical Sciences ,Public Health and Health Services ,Heart failure ,Cardiorespiratory Medicine and Haematology ,Telemedicine
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