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Interpretable Machine Learning for Inpatient COVID-19 Mortality Risk Assessments: Diabetes Mellitus Exclusive Interplay.
Khadem, Heydar; Nemat, Hoda; Elliott, Jackie; Benaissa, Mohammed.
  • Khadem H; Department of Electronic and Electrical Engineering, University of Sheffield, Sheffield S10 2TN, UK.
  • Nemat H; Department of Electronic and Electrical Engineering, University of Sheffield, Sheffield S10 2TN, UK.
  • Elliott J; Department of Oncology and Metabolism, University of Sheffield, Sheffield S10 2TN, UK.
  • Benaissa M; Teaching Hospitals, Diabetes and Endocrine Centre, Northern General Hospital, Sheffield S5 7AU, UK.
Sensors (Basel) ; 22(22)2022 Nov 12.
Статья в английский | MEDLINE | ID: covidwho-2110225
ABSTRACT
People with diabetes mellitus (DM) are at elevated risk of in-hospital mortality from coronavirus disease-2019 (COVID-19). This vulnerability has spurred efforts to pinpoint distinctive characteristics of COVID-19 patients with DM. In this context, the present article develops ML models equipped with interpretation modules for inpatient mortality risk assessments of COVID-19 patients with DM. To this end, a cohort of 156 hospitalised COVID-19 patients with pre-existing DM is studied. For creating risk assessment platforms, this work explores a pool of historical, on-admission, and during-admission data that are DM-related or, according to preliminary investigations, are exclusively attributed to the COVID-19 susceptibility of DM patients. First, a set of careful pre-modelling steps are executed on the clinical data, including cleaning, pre-processing, subdivision, and feature elimination. Subsequently, standard machine learning (ML) modelling analysis is performed on the cured data. Initially, a classifier is tasked with forecasting COVID-19 fatality from selected features. The model undergoes thorough evaluation analysis. The results achieved substantiate the efficacy of the undertaken data curation and modelling steps. Afterwards, SHapley Additive exPlanations (SHAP) technique is assigned to interpret the generated mortality risk prediction model by rating the predictors' global and local influence on the model's outputs. These interpretations advance the comprehensibility of the analysis by explaining the formation of outcomes and, in this way, foster the adoption of the proposed methodologies. Next, a clustering algorithm demarcates patients into four separate groups based on their SHAP values, providing a practical risk stratification method. Finally, a re-evaluation analysis is performed to verify the robustness of the proposed framework.
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Полный текст: Имеется в наличии Коллекция: Международные базы данных база данных: MEDLINE Основная тема: Diabetes Mellitus / COVID-19 Тип исследования: Когортное исследование / Экспериментальные исследования / Наблюдательное исследование / Прогностическое исследование / Рандомизированные контролируемые испытания Пределы темы: Люди Язык: английский Год: 2022 Тип: Статья Аффилированная страна: S22228757

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Полный текст: Имеется в наличии Коллекция: Международные базы данных база данных: MEDLINE Основная тема: Diabetes Mellitus / COVID-19 Тип исследования: Когортное исследование / Экспериментальные исследования / Наблюдательное исследование / Прогностическое исследование / Рандомизированные контролируемые испытания Пределы темы: Люди Язык: английский Год: 2022 Тип: Статья Аффилированная страна: S22228757