Deep learning analysis of clinical course of primary nephrotic syndrome: Japan Nephrotic Syndrome Cohort Study (JNSCS)
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Published:2022-08-12
Issue:12
Volume:26
Page:1170-1179
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ISSN:1342-1751
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Container-title:Clinical and Experimental Nephrology
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language:en
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Short-container-title:Clin Exp Nephrol
Author:
Kimura TomonoriORCID, Yamamoto Ryohei, Yoshino Mitsuaki, Sakate Ryuichi, Imai Enyu, Maruyama Shoichi, Yokoyama Hitoshi, Sugiyama Hitoshi, Nitta Kosaku, Tsukamoto Tatsuo, Uchida Shunya, Takeda Asami, Sato Toshinobu, Wada Takashi, Hayashi Hiroki, Akai Yasuhiro, Fukunaga Megumu, Tsuruya Kazuhiko, Masutani Kosuke, Konta Tsuneo, Shoji Tatsuya, Hiramatsu Takeyuki, Goto Shunsuke, Tamai Hirofumi, Nishio Saori, Nagai Kojiro, Yamagata Kunihiro, Yasuda Hideo, Ichida Shizunori, Naruse Tomohiko, Nishino Tomoya, Sobajima Hiroshi, Akahori Toshiyuki, Ito Takafumi, Terada Yoshio, Katafuchi Ritsuko, Fujimoto Shouichi, Okada Hirokazu, Mimura Tetsushi, Suzuki Satoshi, Saka Yosuke, Sofue Tadashi, Kitagawa Kiyoki, Fujita Yoshiro, Mizutani Makoto, Kashihara Naoki, Sato Hiroshi, Narita Ichiei, Isaka Yoshitaka
Abstract
Abstract
Background
Prognosis of nephrotic syndrome has been evaluated based on pathological diagnosis, whereas its clinical course is monitored using objective items and the treatment strategy is largely the same. We examined whether the entire natural history of nephrotic syndrome could be evaluated using objective common clinical items.
Methods
Machine learning clustering was performed on 205 cases from the Japan Nephrotic Syndrome Cohort Study, whose clinical parameters, serum creatinine, serum albumin, dipstick hematuria, and proteinuria were traceable after kidney biopsy at 5 measured points up to 2 years. The clinical patterns of time-series data were learned using long short-term memory (LSTM)-encoder–decoder architecture, an unsupervised machine learning classifier. Clinical clusters were defined as Gaussian mixture distributions in a two-dimensional scatter plot based on the highest log-likelihood.
Results
Time-series data of nephrotic syndrome were classified into four clusters. Patients in the fourth cluster showed the increase in serum creatinine in the later part of the follow-up period. Patients in both the third and fourth clusters were initially high in both hematuria and proteinuria, whereas a lack of decline in the urinary protein level preceded the worsening of kidney function in fourth cluster. The original diseases of fourth cluster included all the disease studied in this cohort.
Conclusions
Four kinds of clinical courses were identified in nephrotic syndrome. This classified clinical course may help objectively grasp the actual condition or treatment resistance of individual patients with nephrotic syndrome.
Funder
Ministry of Health, Labour and Welfare
Publisher
Springer Science and Business Media LLC
Subject
Physiology (medical),Nephrology,Physiology
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