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Cited 1 time in webofscience Cited 1 time in scopus
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Predicting outcomes of continuous renal replacement therapy using body composition monitoring: a deep-learning approachopen access

Authors
Yoo, Kyung DonNoh, JunhyugBae, WonhoAn, Jung NamOh, Hyung JungRhee, HarinSeong, Eun YoungBaek, Seon HaAhn, Shin YoungCho, Jang-HeeKim, Dong KiRyu, Dong-RyeolKim, SejoongLim, Chun SooLee, Jung PyoKim, Sung GyunKo, Gang JeePark, Jung TakChang, Tae IkChung, SungjinLee, Jung PyoLee, Sang HoChoi, Bum SoonJeon, Jin SeokSong, SangheonChoi, Dae EunJung, Woo Kyung
Issue Date
Mar-2023
Publisher
Nature Publishing Group
Citation
Scientific Reports, v.13, no.1
Indexed
SCIE
SCOPUS
Journal Title
Scientific Reports
Volume
13
Number
1
URI
https://scholarworks.korea.ac.kr/kumedicine/handle/2021.sw.kumedicine/63888
DOI
10.1038/s41598-023-30074-4
ISSN
2045-2322
Abstract
Fluid balance is a critical prognostic factor for patients with severe acute kidney injury (AKI) requiring continuous renal replacement therapy (CRRT). This study evaluated whether repeated fluid balance monitoring could improve prognosis in this clinical population. This was a multicenter retrospective study that included 784 patients (mean age, 67.8 years; males, 66.4%) with severe AKI requiring CRRT during 2017-2019 who were treated in eight tertiary hospitals in Korea. Sequential changes in total body water were compared between patients who died (event group) and those who survived (control group) using mixed-effects linear regression analyses. The performance of various machine learning methods, including recurrent neural networks, was compared to that of existing prognostic clinical scores. After adjusting for confounding factors, a marginal benefit of fluid balance was identified for the control group compared to that for the event group (p = 0.074). The deep-learning model using a recurrent neural network with an autoencoder and including fluid balance monitoring provided the best differentiation between the groups (area under the curve, 0.793) compared to 0.604 and 0.606 for SOFA and APACHE II scores, respectively. Our prognostic, deep-learning model underlines the importance of fluid balance monitoring for prognosis assessment among patients receiving CRRT.
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Ko, Gang Jee
Guro Hospital (Department of Nephrology and Hypertension, Guro Hospital)
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