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Three-dimensional convolutional neural network-based classification of chronic kidney disease severity using kidney MRI.
Nagawa, Keita; Hara, Yuki; Inoue, Kaiji; Yamagishi, Yosuke; Koyama, Masahiro; Shimizu, Hirokazu; Matsuura, Koichiro; Osawa, Iichiro; Inoue, Tsutomu; Okada, Hirokazu; Kobayashi, Naoki; Kozawa, Eito.
Affiliation
  • Nagawa K; Department of Radiology, Saitama Medical University, 38 Morohongou, Moroyama-machi, Iruma-gun, Saitama, Japan.
  • Hara Y; Department of Radiology, Saitama Medical University, 38 Morohongou, Moroyama-machi, Iruma-gun, Saitama, Japan.
  • Inoue K; Department of Radiology, Saitama Medical University, 38 Morohongou, Moroyama-machi, Iruma-gun, Saitama, Japan. kaiji@saitama-med.ac.jp.
  • Yamagishi Y; Department of Radiology, Saitama Medical University, 38 Morohongou, Moroyama-machi, Iruma-gun, Saitama, Japan.
  • Koyama M; Department of Radiology, Saitama Medical University, 38 Morohongou, Moroyama-machi, Iruma-gun, Saitama, Japan.
  • Shimizu H; Department of Radiology, Saitama Medical University, 38 Morohongou, Moroyama-machi, Iruma-gun, Saitama, Japan.
  • Matsuura K; Department of Radiology, Saitama Medical University, 38 Morohongou, Moroyama-machi, Iruma-gun, Saitama, Japan.
  • Osawa I; Department of Radiology, Saitama Medical University, 38 Morohongou, Moroyama-machi, Iruma-gun, Saitama, Japan.
  • Inoue T; Department of Nephrology, Saitama Medical University, 38 Morohongou, Moroyama-machi, Iruma-gun, Saitama, Japan.
  • Okada H; Department of Nephrology, Saitama Medical University, 38 Morohongou, Moroyama-machi, Iruma-gun, Saitama, Japan.
  • Kobayashi N; School of Biomedical Engineering, Faculty of Health and Medical Care, Saitama Medical University, 38 Morohongou, Moroyama-machi, Iruma-gun, Saitama, Japan.
  • Kozawa E; Department of Radiology, Saitama Medical University, 38 Morohongou, Moroyama-machi, Iruma-gun, Saitama, Japan.
Sci Rep ; 14(1): 15775, 2024 Jul 09.
Article in En | MEDLINE | ID: mdl-38982238
ABSTRACT
A three-dimensional convolutional neural network model was developed to classify the severity of chronic kidney disease (CKD) using magnetic resonance imaging (MRI) Dixon-based T1-weighted in-phase (IP)/opposed-phase (OP)/water-only (WO) imaging. Seventy-three patients with severe renal dysfunction (estimated glomerular filtration rate [eGFR] < 30 mL/min/1.73 m2, CKD stage G4-5); 172 with moderate renal dysfunction (30 ≤ eGFR < 60 mL/min/1.73 m2, CKD stage G3a/b); and 76 with mild renal dysfunction (eGFR ≥ 60 mL/min/1.73 m2, CKD stage G1-2) participated in this study. The model was applied to the right, left, and both kidneys, as well as to each imaging method (T1-weighted IP/OP/WO images). The best performance was obtained when using bilateral kidneys and IP images, with an accuracy of 0.862 ± 0.036. The overall accuracy was better for the bilateral kidney models than for the unilateral kidney models. Our deep learning approach using kidney MRI can be applied to classify patients with CKD based on the severity of kidney disease.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Severity of Illness Index / Magnetic Resonance Imaging / Neural Networks, Computer / Renal Insufficiency, Chronic / Glomerular Filtration Rate / Kidney Limits: Adult / Aged / Female / Humans / Male / Middle aged Language: En Journal: Sci Rep Year: 2024 Type: Article Affiliation country: Japan

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Severity of Illness Index / Magnetic Resonance Imaging / Neural Networks, Computer / Renal Insufficiency, Chronic / Glomerular Filtration Rate / Kidney Limits: Adult / Aged / Female / Humans / Male / Middle aged Language: En Journal: Sci Rep Year: 2024 Type: Article Affiliation country: Japan