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Exploring Mortality and Prognostic Factors of Heart Failure with In-Hospital and Emergency Patients by Electronic Medical Records: A Machine Learning Approach
被引:1
作者:
Yu, Cheng-Sheng
[1
,2
,3
,4
]
Wu, Jenny L.
[5
]
Shih, Chun-Ming
[6
,7
,8
]
Chiu, Kuan-Lin
[9
]
Chen, Yu-Da
[9
,10
]
Chang, Tzu-Hao
[5
,11
]
机构:
[1] Taipei Med Univ, Grad Inst Data Sci, Coll Management, New Taipei City 235603, Taiwan
[2] Taipei Med Univ, Clin Data Ctr, Off Data Sci, New Taipei City 235603, Taiwan
[3] Nan Shan Life Insurance Co Ltd, Fintech RD Ctr, Taipei, Taiwan
[4] Nan Shan Life Insurance Co Ltd, Beyond Lab, Taipei, Taiwan
[5] Taipei Med Univ, Coll Med Sci & Technol, Grad Inst Biomed Informat, New Taipei City 235603, Taiwan
[6] Taipei Med Univ, Coll Med, Sch Med, Dept Internal Med, Taipei 11031, Taiwan
[7] Taipei Med Univ Hosp, Cardiovasc Res Ctr, Taipei 11031, Taiwan
[8] Taipei Med Univ, Taipei Heart Inst, Taipei 11031, Taiwan
[9] Taipei Med Univ Hosp, Dept Family Med, Taipei 11031, Taiwan
[10] Taipei Med Univ, Coll Med, Sch Med, Taipei 11031, Taiwan
[11] Taipei Med Univ Hosp, Clin Big Data Res Ctr, Taipei 11031, Taiwan
关键词:
mortality;
risk factor;
cardiovascular disease;
multivariate statistical analysis;
machine learning;
artificial intelligence;
ARTIFICIAL-INTELLIGENCE;
PREDICTING MORTALITY;
PALLIATIVE CARE;
SERUM-ALBUMIN;
OF-LIFE;
RISK;
END;
CLASSIFICATION;
DYSFUNCTION;
DISEASE;
D O I:
10.2147/RMHP.S488159
中图分类号:
R19 [保健组织与事业(卫生事业管理)];
学科分类号:
摘要:
Purpose: As HF progresses into advanced HF, patients experience a poor quality of life, distressing symptoms, intensive care use, social distress, and eventual hospital death. We aimed to investigate the relationship between morality and potential prognostic factors among in-patient and emergency patients with HF.<br /> Patients and Methods: A case series study: Data are collected from in-hospital and emergency care patients from 2014 to 2021, including their international classification of disease at admission, and laboratory data such as blood count, liver and renal functions, lipid profile, and other biochemistry from the hospital's electrical medical records. After a series of data pre-processing in the electronic medical record system, several machine learning models were used to evaluate predictions of HF mortality. The outcomes of those potential risk factors were visualized by different statistical analyses.<br /> Results: In total, 3871 hF patients were enrolled. Logistic regression showed that intensive care unit (ICU) history within 1 week (OR: 9.765, 95% CI: 6.65, 14.34; p-value < 0.001) and prothrombin time (OR: 1.193, 95% CI: 1.098, 1.296; < 0.001) were associated with mortality. Similar results were obtained when we analyzed the data using Cox regression instead of logistic regression. Random forest, support vector machine (SVM), Adaboost, and logistic regression had better overall performances with areas under the receiver operating characteristic curve (AUROCs) of > 0.87. Na & iuml;ve Bayes was the best in terms of both specificity and precision. With ensemble learning, age, ICU history within 1 week, and respiratory rate (BF) were the top three compelling risk factors affecting mortality due to HF. To improve the explainability of the AI models, Shapley Additive Explanations methods were also conducted.<br /> Conclusion: Exploring HF mortality and its patterns related to clinical risk factors by machine learning models can help physicians make appropriate decisions when monitoring HF patients' health quality in the hospital.
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页码:77 / 93
页数:17
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