TY - JOUR KW - Electronic Health Records KW - Leprosy KW - LSTM KW - Chicken Swarm Optimization KW - Particle Swarm Optimization KW - Deep learning AU - Mehta J AU - Kumar A AU - Chakrabarti P AB -
Leprosy is a persistent infectious illness produced by bacteria called Mycobacterium leprae. Lepra responses and delayed leprosy diagnosis might result in chronic neuritis and eventually disability. This paper aims to classify leprosy patients' Electronic Health Records (EHRs) based on the severity of their diseases as managed at the designated center in India. The health records include demographic information, signs of symptoms, laboratory test results, and clinical notes. The leprosy EHRs are modeled with Systematized Nomenclature of MedicineClinical Terms (SNOMED-CT) medical codes. To predict the future clinical events deep learning algorithms using Long short-term memory (LSTM) networks have been validated in the last few years. However, the performance of the LSTM network depends upon the selection of hyperparameters. We propose a novel method of optimizing LSTM parameters using chicken swarm optimization (CHSO) to classify the severity levels of leprosy patients as mild, moderate, or severe cases. Instead of using trial and error-based hyperparameter tuning, the proposed CHSO-LSTM model provides the best fittest value of hyperparameters to increase the accuracy of classification. The result shows that our model outperforms ANN, GRU, LSTM, Bi-LSTM, and Particle Swarm Optimization-based LSTM deep learning models concerning performance matrices Accuracy (ACC) - 99.11%, Precision (PRE) - 99%, Recall (REC) - 99%, F1-Score (F1-SCR) - 99%, Matthew’s correlation coefficient (MCC) - 0.9902 and categorical cross-entropy loss (CCE-loss) - 0.0197.
BT - Library Progress International LA - ENG M3 - Article N2 -Leprosy is a persistent infectious illness produced by bacteria called Mycobacterium leprae. Lepra responses and delayed leprosy diagnosis might result in chronic neuritis and eventually disability. This paper aims to classify leprosy patients' Electronic Health Records (EHRs) based on the severity of their diseases as managed at the designated center in India. The health records include demographic information, signs of symptoms, laboratory test results, and clinical notes. The leprosy EHRs are modeled with Systematized Nomenclature of MedicineClinical Terms (SNOMED-CT) medical codes. To predict the future clinical events deep learning algorithms using Long short-term memory (LSTM) networks have been validated in the last few years. However, the performance of the LSTM network depends upon the selection of hyperparameters. We propose a novel method of optimizing LSTM parameters using chicken swarm optimization (CHSO) to classify the severity levels of leprosy patients as mild, moderate, or severe cases. Instead of using trial and error-based hyperparameter tuning, the proposed CHSO-LSTM model provides the best fittest value of hyperparameters to increase the accuracy of classification. The result shows that our model outperforms ANN, GRU, LSTM, Bi-LSTM, and Particle Swarm Optimization-based LSTM deep learning models concerning performance matrices Accuracy (ACC) - 99.11%, Precision (PRE) - 99%, Recall (REC) - 99%, F1-Score (F1-SCR) - 99%, Matthew’s correlation coefficient (MCC) - 0.9902 and categorical cross-entropy loss (CCE-loss) - 0.0197.
PY - 2024 SP - 13155 EP - 13169 T2 - Library Progress International TI - Severity Classification of Electronic Health Records of Leprosy Patients Using Chicken Swarm Optimization-based LSTM Model UR - https://bpasjournals.com/library-science/index.php/journal/article/download/2618/1775/3988 ER -