A machine-learning-based prediction of non-home discharge among acute heart failure patients

Background Scarce data on factors related to discharge disposition in patients hospitalized for acute heart failure (AHF) were available, and we sought to develop a parsimonious and simple predictive model for non-home discharge via machine learning. Methods This observational cohort study using a J...

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Veröffentlicht in:Clinical research in cardiology 2024-04, Vol.113 (4), p.522-532
Hauptverfasser: Okada, Akira, Kaneko, Hidehiro, Konishi, Masaaki, Kamiya, Kentaro, Sugimoto, Tadafumi, Matsuoka, Satoshi, Yokota, Isao, Suzuki, Yuta, Yamaguchi, Satoko, Itoh, Hidetaka, Fujiu, Katsuhito, Michihata, Nobuaki, Jo, Taisuke, Matsui, Hiroki, Fushimi, Kiyohide, Takeda, Norifumi, Morita, Hiroyuki, Yasunaga, Hideo, Komuro, Issei
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Sprache:eng
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Zusammenfassung:Background Scarce data on factors related to discharge disposition in patients hospitalized for acute heart failure (AHF) were available, and we sought to develop a parsimonious and simple predictive model for non-home discharge via machine learning. Methods This observational cohort study using a Japanese national database included 128,068 patients admitted from home for AHF between April 2014 and March 2018. The candidate predictors for non-home discharge were patient demographics, comorbidities, and treatment performed within 2 days after hospital admission. We used 80% of the population to develop a model using all 26 candidate variables and using the variable selected by 1 standard-error rule of Lasso regression, which enhances interpretability, and 20% to validate the predictive ability. Results We analyzed 128,068 patients, and 22,330 patients were not discharged to home; 7,879 underwent in-hospital death and 14,451 were transferred to other facilities. The machine-learning-based model consisted of 11 predictors, showing a discrimination ability comparable to that using all the 26 variables ( c -statistic: 0.760 [95% confidence interval, 0.752–0.767] vs. 0.761 [95% confidence interval, 0.753–0.769]). The common 1SE-selected variables identified throughout all analyses were low scores in activities of daily living, advanced age, absence of hypertension, impaired consciousness, failure to initiate enteral alimentation within 2 days and low body weight. Conclusions The developed machine learning model using 11 predictors had a good predictive ability to identify patients at high risk for non-home discharge. Our findings would contribute to the effective care coordination in this era when HF is rapidly increasing in prevalence.
ISSN:1861-0684
1861-0692
DOI:10.1007/s00392-023-02209-0