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Multi-label learning model for diabetes disease comorbidity

By: Folorunso, Sakinat Oluwabukonla.
Contributor(s): Awotunde, Joseph Bamidele.
Publisher: USA Springer 2023Edition: Vol.104(5), Oct.Description: 1133-1145p.Subject(s): Humanities and Applied SciencesOnline resources: Click here In: Journal of the institution of engineers (India): Series BSummary: Multi-label modeling of clinical data is a challenging classification problem especially for diseases with comorbidities. The complexity of the dataset makes it difficult to detect hidden pattern and infer useful information about disease classes that can occur simultaneously or successively. The presence of comorbidities has a significant impact on the treatment and management of diseases like diabetes. Hence, this research aims to build an intelligent clinical prediction model tool built with multi-label classification (MLC) algorithm for medical professionals to find trends in the patient’s data that show threats related to specific chronic illnesses. Patient’s clinical information consisting of 150,137 anonymized records with 214 but regulated to 147 attributes and 8 labels: ‘lymphoma,’ ‘aids,’ ‘leukemia,’ ‘cirrhosis,’ ‘immunosuppression,’ ‘diabetes mellitus,’ ‘solid tumor with metastases’ and ‘hepatic failure.’ The dataset was split into 70:30 train-test ratio. Tenfold cross-validation was used to assess the projection accuracy with ranking, example and label-based metrics. This research proposed BaggingML, PS, PSt, DeePML and RAkEL MLC models with decision tree (DT) as base classifier to learn the study dataset and compare their results based on standard metrices. BaggingML model gave the utmost performance based on lowest score on Hamming loss (0.034), highest accuracy (0.7081), AUROC (0.627), F1-Micro (0.843) and Precision Micro (0.843).
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Multi-label modeling of clinical data is a challenging classification problem especially for diseases with comorbidities. The complexity of the dataset makes it difficult to detect hidden pattern and infer useful information about disease classes that can occur simultaneously or successively. The presence of comorbidities has a significant impact on the treatment and management of diseases like diabetes. Hence, this research aims to build an intelligent clinical prediction model tool built with multi-label classification (MLC) algorithm for medical professionals to find trends in the patient’s data that show threats related to specific chronic illnesses. Patient’s clinical information consisting of 150,137 anonymized records with 214 but regulated to 147 attributes and 8 labels: ‘lymphoma,’ ‘aids,’ ‘leukemia,’ ‘cirrhosis,’ ‘immunosuppression,’ ‘diabetes mellitus,’ ‘solid tumor with metastases’ and ‘hepatic failure.’ The dataset was split into 70:30 train-test ratio. Tenfold cross-validation was used to assess the projection accuracy with ranking, example and label-based metrics. This research proposed BaggingML, PS, PSt, DeePML and RAkEL MLC models with decision tree (DT) as base classifier to learn the study dataset and compare their results based on standard metrices. BaggingML model gave the utmost performance based on lowest score on Hamming loss (0.034), highest accuracy (0.7081), AUROC (0.627), F1-Micro (0.843) and Precision Micro (0.843).

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