Matches in SemOpenAlex for { <https://semopenalex.org/work/W2763088106> ?p ?o ?g. }
- W2763088106 abstract "A very important aspect of personalized healthcare is to continuously monitor an individual's health using wearable biomedical devices and essentially to analyse and if possible to predict potential health hazards that may prove fatal if not treated in time. The prediction aspect embedded in the system helps in avoiding delays in providing timely medical treatment, even before an individual reaches a critical condition. Despite of the availability of modern wearable health monitoring devices, the real-time analyses and prediction component seems to be missing with these devices. The research work illustrated in this paper, at an outset, focussed on constantly monitoring an individual's ECG readings using a wearable 3-lead ECG kit and more importantly focussed on performing real-time analyses to detect arrhythmia to be able to identify and predict heart risk. Also, current research shows extensive use of heart rate variability (HRV) analysis and machine learning for arrhythmia classification, which however depends on the morphology of the ECG waveforms and the sensitivity of the ECG equipment. Since a wearable 3-lead ECG kit was used, the accuracy of classification had to be dealt with at the machine learning phase, so a unique feature extraction method was developed to increase the accuracy of classification. As a case study a very widely used Arrhythmia database (MIT-BIH, Physionet) was used to develop learning, classification and prediction models. Neuralnet fitting models on the extracted features showed mean-squared error of as low as 0.0085 and regression value as high as 0.99. Current experiments show 99.4% accuracy using k-NN Classification models and show values of Cross-Entropy Error of 7.6 and misclassification error value of 1.2 on test data using scaled conjugate gradient pattern matching algorithms. Software components were developed for wearable devices that took ECG readings from a 3-Lead ECG data acquisition kit in real time, de-noised, filtered and relayed the sample readings to the tele health analytical server. The analytical server performed the classification and prediction tasks based on the trained classification models and could raise appropriate alarms if ECG abnormalities of V (Premature Ventricular Contraction: PVC), A (Atrial Premature Beat: APB), L (Left bundle branch block beat), R (Right bundle branch block beat) type annotations in MITDB were detected. The instruments were networked using IoT (Internet of Things) devices and abnormal ECG events related to arrhythmia, from analytical server could be logged using an FHIR web service implementation, according to a SNOMED coding system and could be accessed in Electronic Health Record by the concerned medic to take appropriate and timely decisions. The system focused on `preventive care rather than remedial cure' which has become a major focus of all the health care and cure institutions across the globe." @default.
- W2763088106 created "2017-10-20" @default.
- W2763088106 creator A5007896431 @default.
- W2763088106 creator A5024866256 @default.
- W2763088106 date "2017-06-01" @default.
- W2763088106 modified "2023-09-25" @default.
- W2763088106 title "ECG classification and prognostic approach towards personalized healthcare" @default.
- W2763088106 cites W1482688465 @default.
- W2763088106 cites W1498129555 @default.
- W2763088106 cites W1925204115 @default.
- W2763088106 cites W1974284263 @default.
- W2763088106 cites W1974946451 @default.
- W2763088106 cites W1994670735 @default.
- W2763088106 cites W1999369240 @default.
- W2763088106 cites W2005340049 @default.
- W2763088106 cites W2021784328 @default.
- W2763088106 cites W2026705330 @default.
- W2763088106 cites W2033723516 @default.
- W2763088106 cites W2042176889 @default.
- W2763088106 cites W2057522768 @default.
- W2763088106 cites W2058401544 @default.
- W2763088106 cites W2058715873 @default.
- W2763088106 cites W2064054157 @default.
- W2763088106 cites W2071388157 @default.
- W2763088106 cites W2095409369 @default.
- W2763088106 cites W2103308415 @default.
- W2763088106 cites W2104594675 @default.
- W2763088106 cites W2110843198 @default.
- W2763088106 cites W2127913883 @default.
- W2763088106 cites W2162800060 @default.
- W2763088106 cites W2251133041 @default.
- W2763088106 cites W2276530525 @default.
- W2763088106 cites W2318199321 @default.
- W2763088106 cites W2400334659 @default.
- W2763088106 cites W2492557229 @default.
- W2763088106 cites W2537357227 @default.
- W2763088106 cites W2592923581 @default.
- W2763088106 cites W3101771914 @default.
- W2763088106 cites W4256697785 @default.
- W2763088106 doi "https://doi.org/10.1109/socialmedia.2017.8057360" @default.
- W2763088106 hasPublicationYear "2017" @default.
- W2763088106 type Work @default.
- W2763088106 sameAs 2763088106 @default.
- W2763088106 citedByCount "12" @default.
- W2763088106 countsByYear W27630881062017 @default.
- W2763088106 countsByYear W27630881062018 @default.
- W2763088106 countsByYear W27630881062019 @default.
- W2763088106 countsByYear W27630881062020 @default.
- W2763088106 countsByYear W27630881062021 @default.
- W2763088106 countsByYear W27630881062022 @default.
- W2763088106 crossrefType "proceedings-article" @default.
- W2763088106 hasAuthorship W2763088106A5007896431 @default.
- W2763088106 hasAuthorship W2763088106A5024866256 @default.
- W2763088106 hasBestOaLocation W27630881062 @default.
- W2763088106 hasConcept C119857082 @default.
- W2763088106 hasConcept C124101348 @default.
- W2763088106 hasConcept C127413603 @default.
- W2763088106 hasConcept C138885662 @default.
- W2763088106 hasConcept C149635348 @default.
- W2763088106 hasConcept C150594956 @default.
- W2763088106 hasConcept C154945302 @default.
- W2763088106 hasConcept C160735492 @default.
- W2763088106 hasConcept C162324750 @default.
- W2763088106 hasConcept C164705383 @default.
- W2763088106 hasConcept C21200559 @default.
- W2763088106 hasConcept C24326235 @default.
- W2763088106 hasConcept C2776401178 @default.
- W2763088106 hasConcept C2779161974 @default.
- W2763088106 hasConcept C2988455589 @default.
- W2763088106 hasConcept C41008148 @default.
- W2763088106 hasConcept C41895202 @default.
- W2763088106 hasConcept C50522688 @default.
- W2763088106 hasConcept C52622490 @default.
- W2763088106 hasConcept C54290928 @default.
- W2763088106 hasConcept C71924100 @default.
- W2763088106 hasConceptScore W2763088106C119857082 @default.
- W2763088106 hasConceptScore W2763088106C124101348 @default.
- W2763088106 hasConceptScore W2763088106C127413603 @default.
- W2763088106 hasConceptScore W2763088106C138885662 @default.
- W2763088106 hasConceptScore W2763088106C149635348 @default.
- W2763088106 hasConceptScore W2763088106C150594956 @default.
- W2763088106 hasConceptScore W2763088106C154945302 @default.
- W2763088106 hasConceptScore W2763088106C160735492 @default.
- W2763088106 hasConceptScore W2763088106C162324750 @default.
- W2763088106 hasConceptScore W2763088106C164705383 @default.
- W2763088106 hasConceptScore W2763088106C21200559 @default.
- W2763088106 hasConceptScore W2763088106C24326235 @default.
- W2763088106 hasConceptScore W2763088106C2776401178 @default.
- W2763088106 hasConceptScore W2763088106C2779161974 @default.
- W2763088106 hasConceptScore W2763088106C2988455589 @default.
- W2763088106 hasConceptScore W2763088106C41008148 @default.
- W2763088106 hasConceptScore W2763088106C41895202 @default.
- W2763088106 hasConceptScore W2763088106C50522688 @default.
- W2763088106 hasConceptScore W2763088106C52622490 @default.
- W2763088106 hasConceptScore W2763088106C54290928 @default.
- W2763088106 hasConceptScore W2763088106C71924100 @default.
- W2763088106 hasLocation W27630881061 @default.
- W2763088106 hasLocation W27630881062 @default.
- W2763088106 hasOpenAccess W2763088106 @default.
- W2763088106 hasPrimaryLocation W27630881061 @default.