
| ID | 69400 |
| フルテキストURL |
suppl1.xlsx
467 KB
suppl2.docx
421 KB
|
| 著者 |
Imaizumi, Takahiro
Department of Nephrology, Nagoya University Graduate School of Medicine
Yokota, Takashi
Institute of Health Science Innovation for Medical Care, Hokkaido University Hospital
Funakoshi, Kouta
Kyusyu University Hospital
Yasuda, Kazushi
Department of Nephrology, Nagoya University Graduate School of Medicine
Hattori, Akiko
Department of Nephrology, Nagoya University Graduate School of Medicine
Morohashi, Akemi
Department of Advanced Medicine, Nagoya University Hospital
Kusakabe, Tatsumi
Institute of Health Science Innovation for Medical Care, Hokkaido University Hospital
Shojima, Masumi
Department of Medicine and Clinical Science, Graduate School of Medical Sciences, Kyushu University
Nagamine, Sayoko
Department of Medicine and Clinical Science, Graduate School of Medical Sciences, Kyushu University
Nakano, Toshiaki
Department of Medicine and Clinical Science, Graduate School of Medical Sciences, Kyushu University
Huang, Yong
Division of Medical Informatics, Okayama University Hospital
Morinaga, Hiroshi
Department of Comprehensive Therapy for Chronic Kidney Disease, Faculty of Medicine, Dentistry and Pharmaceutical Sciences, Okayama University
Ohta, Miki
Clinical Research Promotion Center, The University of Tokyo Hospital
Nagashima, Satomi
Department of Healthcare Information Management, The University of Tokyo Hospital
Inoue, Ryusuke
Medical Information Technology Center, Tohoku University Hospital
Nakamura, Naoki
Medical Information Technology Center, Tohoku University Hospital
Ota, Hideki
Medical Information Technology Center, Tohoku University Hospital
Maruyama, Tatsuya
Clinical Research Promotion Center, The University of Tokyo Hospital
Gobara, Hideo
Division of Medical Informatics, Okayama University Hospital
Endoh, Akira
Department of Medical Informatics, Hokkaido University Hospital
Ando, Masahiko
Department of Nephrology, Nagoya University Graduate School of Medicine
Shiratori, Yoshimune
Medical IT Center, Nagoya University Hospital
Maruyama, Shoichi
Department of Nephrology, Nagoya University Graduate School of Medicine
|
| 抄録 | Background Identifying patients on dialysis among those with an estimated glomerular filtration rate (eGFR) < 15 mL/min/1.73 m2 remains challenging. To facilitate clinical research in advanced chronic kidney disease (CKD) using electronic health records, we aimed to develop algorithms to identify dialysis patients using laboratory data obtained in routine practice.
Methods We collected clinical data of patients with an eGFR < 15 mL/min/1.73 m2 from six clinical research core hospitals across Japan: four hospitals for the derivation cohort and two for the validation cohort. The candidate factors for the classification models were identified using logistic regression with stepwise backward selection. To ensure transplant patients were not included in the non-dialysis population, we excluded individuals with the disease code Z94.0. Results We collected data from 1142 patients, with 640 (56%) currently undergoing hemodialysis or peritoneal dialysis (PD), including 426 of 763 patients in the derivation cohort and 214 of 379 patients in the validation cohort. The prescription of PD solutions perfectly identified patients undergoing dialysis. After excluding patients prescribed PD solutions, seven laboratory parameters were included in the algorithm. The areas under the receiver operation characteristic curve were 0.95 and 0.98 and the positive and negative predictive values were 90.9% and 91.4% in the derivation cohort and 96.2% and 94.6% in the validation cohort, respectively. The calibrations were almost linear. Conclusions We identified patients on dialysis among those with an eGFR < 15 ml/min/1.73 m2. This study paves the way for database research in nephrology, especially for patients with non-dialysis-dependent advanced CKD. |
| キーワード | Chronic kidney disease
Algorithm
Classification
Dialysis
|
| 発行日 | 2025-01-06
|
| 出版物タイトル |
Clinical and Experimental Nephrology
|
| 巻 | 29巻
|
| 号 | 5号
|
| 出版者 | Springer Science and Business Media LLC
|
| 開始ページ | 650
|
| 終了ページ | 661
|
| ISSN | 1342-1751
|
| NCID | AA11126935
|
| 資料タイプ |
学術雑誌論文
|
| 言語 |
英語
|
| OAI-PMH Set |
岡山大学
|
| 著作権者 | © The Author(s) 2025
|
| 論文のバージョン | publisher
|
| PubMed ID | |
| DOI | |
| Web of Science KeyUT | |
| 関連URL | isVersionOf https://doi.org/10.1007/s10157-024-02614-3
|
| ライセンス | https://creativecommons.org/licenses/by/4.0
|
| Citation | Imaizumi, T., Yokota, T., Funakoshi, K. et al. Development and validation of an algorithm for identifying patients undergoing dialysis from patients with advanced chronic kidney disease. Clin Exp Nephrol 29, 650–661 (2025). https://doi.org/10.1007/s10157-024-02614-3
|
| 助成情報 |
( 名古屋大学 / Nagoya University )
17lk1503005:
臨床研究中核病院機能を安定的に発揮できる拠点づくり
( 国立研究開発法人日本医療研究開発機構 / Japan Agency for Medical Research and Development )
17lk1503006:
支援体制の強化・効率化による革新的医療開発の迅速化
( 国立研究開発法人日本医療研究開発機構 / Japan Agency for Medical Research and Development )
18lk1503007:
未承認医薬品を用いた臨床研究の安全性確保と革新的医薬品・医療技術創出の体制強化
( 国立研究開発法人日本医療研究開発機構 / Japan Agency for Medical Research and Development )
17lk1503001:
東北大学病院における医療技術実用化総合促進拠点構築
( 国立研究開発法人日本医療研究開発機構 / Japan Agency for Medical Research and Development )
18lk1503012:
安全性確保に立脚した新規医療技術開発推進に関する研究
( 国立研究開発法人日本医療研究開発機構 / Japan Agency for Medical Research and Development )
17lk1503010:
革新的医薬品医療機器等の研究開発を支援する臨床研究中核病院ARO機能強化
( 国立研究開発法人日本医療研究開発機構 / Japan Agency for Medical Research and Development )
|