Prediction of intradialytic hypotension using pre-dialysis features-a deep learning-based artificial intelligence model

被引:12
作者
Lee, Hanbi [1 ,2 ]
Moon, Sung Joon [3 ]
Kim, Sung Woo [3 ]
Min, Ji Won [4 ]
Park, Hoon Suk [5 ]
Yoon, Hye Eun [6 ]
Kim, Young Soo [7 ]
Kim, Hyung Wook [8 ]
Yang, Chul Woo [1 ,2 ]
Chung, Sungjin [9 ]
Koh, Eun Sil [9 ]
Chung, Byung Ha [1 ,2 ]
机构
[1] Catholic Univ Korea, Coll Med, Transplantat Res Ctr, Seoul, South Korea
[2] Catholic Univ Korea, Seoul St Marys Hosp, Coll Med, Dept Internal Med,Div Nephrol, Seoul, South Korea
[3] APEXAI Co Ltd, Seongnam, South Korea
[4] Catholic Univ Korea, Bucheon St Marys Hosp, Coll Med, Dept Internal Med, Bucheon, South Korea
[5] Catholic Univ Korea, Eunpyeong St Marys Hosp, Coll Med, Dept Internal Med, Seoul, South Korea
[6] Catholic Univ Korea, Incheon St Marys Hosp, Coll Med, Dept Internal Med, Incheon, South Korea
[7] Catholic Univ Korea, Uijeongbu St Marys Hosp, Coll Med, Dept Internal Med, Uijongbu, South Korea
[8] Catholic Univ Korea, St Vincents Hosp, Coll Med, Dept Internal Med, Suwon, South Korea
[9] Catholic Univ Korea, Yeouido St Marys Hosp, Coll Med, Dept Internal Med,Div Nephrol, Seoul, South Korea
关键词
artificial intelligence; clinical data warehouse; deep learning; hemodialysis; intradialytic hypotension; MORTALITY RISK; HEMODIALYSIS;
D O I
10.1093/ndt/gfad064
中图分类号
R3 [基础医学]; R4 [临床医学];
学科分类号
1001 ; 1002 ; 100602 ;
摘要
Background Intradialytic hypotension (IDH) is a serious complication of hemodialysis (HD) that is associated with increased risks of cardiovascular morbidity and mortality. However, its accurate prediction remains a clinical challenge. The aim of this study was to develop a deep learning-based artificial intelligence (AI) model to predict IDH using pre-dialysis features. Methods Data from 2007 patients with 943 220 HD sessions at seven university hospitals were used. The performance of the deep learning model was compared with three machine learning models (logistic regression, random forest and XGBoost). Results IDH occurred in 5.39% of all studied HD sessions. A lower pre-dialysis blood pressure (BP), and a higher ultrafiltration (UF) target rate and interdialytic weight gain in IDH sessions compared with non-IDH sessions, and the occurrence of IDH in previous sessions was more frequent among IDH sessions compared with non-IDH sessions. Matthews correlation coefficient and macro-averaged F1 score were used to evaluate both positive and negative prediction performances. Both values were similar in logistic regression, random forest, XGBoost and deep learning models, developed with data from a single session. When combining data from the previous three sessions, the prediction performance of the deep learning model improved and became superior to that of other models. The common top-ranked features for IDH prediction were mean systolic BP (SBP) during the previous session, UF target rate, pre-dialysis SBP, and IDH experience during the previous session. Conclusions Our AI model predicts IDH accurately, suggesting it as a reliable tool for HD treatment.
引用
收藏
页码:2310 / 2320
页数:11
相关论文
共 34 条
  • [1] Supervised atenolol therapy in the management of hemodialysis hypertension
    Agarwal, R
    [J]. KIDNEY INTERNATIONAL, 1999, 55 (04) : 1528 - 1535
  • [2] Development of an Artificial Intelligence Model to Guide the Management of Blood Pressure, Fluid Volume, and Dialysis Dose in End-Stage Kidney Disease Patients: Proof of Concept and First Clinical Assessment
    Barbieri, Carlo
    Cattinelli, Isabella
    Neri, Luca
    Mari, Flavio
    Ramos, Rosa
    Brancaccio, Diego
    Canaud, Bernard
    Stuard, Stefano
    [J]. KIDNEY DISEASES, 2019, 5 (01) : 28 - 33
  • [3] Using Artificial Intelligence Resources in Dialysis and Kidney Transplant Patients: A Literature Review
    Burlacu, Alexandru
    Iftene, Adrian
    Jugrin, Daniel
    Popa, Iolanda Valentina
    Lupu, Paula Madalina
    Vlad, Cristiana
    Covic, Adrian
    [J]. BIOMED RESEARCH INTERNATIONAL, 2020, 2020
  • [4] Impact of drugs on intradialytic hypotension: Antihypertensives and vasoconstrictors
    Chang, Tara I.
    [J]. SEMINARS IN DIALYSIS, 2017, 30 (06) : 532 - 536
  • [5] Deep Learning for Intradialytic Hypotension Prediction in Hemodialysis Patients
    Chen, Jin-Bor
    Wu, Kuo-Chuan
    Moi, Sin-Hua
    Chuang, Li-Yeh
    Yang, Cheng-Hong
    [J]. IEEE ACCESS, 2020, 8 (82382-82390) : 82382 - 82390
  • [6] XGBoost: A Scalable Tree Boosting System
    Chen, Tianqi
    Guestrin, Carlos
    [J]. KDD'16: PROCEEDINGS OF THE 22ND ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2016, : 785 - 794
  • [7] The advantages of the Matthews correlation coefficient (MCC) over F1 score and accuracy in binary classification evaluation
    Chicco, Davide
    Jurman, Giuseppe
    [J]. BMC GENOMICS, 2020, 21 (01)
  • [8] Implementation of Single Source Based Hospital Information System for the Catholic Medical Center Affiliated Hospitals
    Choi, Inyoung
    Choi, Ran
    Lee, Jonghyun
    Choi, Byung Gil
    [J]. HEALTHCARE INFORMATICS RESEARCH, 2010, 16 (02) : 133 - 139
  • [9] Intradialytic hypotension, blood pressure changes and mortality risk in incident hemodialysis patients
    Chou, Jason A.
    Streja, Elani
    Nguyen, Danh V.
    Rhee, Connie M.
    Obi, Yoshitsugu
    Inrig, Jula K.
    Amin, Alpesh
    Kovesdy, Csaba P.
    Sim, John J.
    Kalantar-Zadeh, Kamyar
    [J]. NEPHROLOGY DIALYSIS TRANSPLANTATION, 2018, 33 (01) : 149 - 159
  • [10] Measuring Intradialytic Hypotension to Improve Quality of Care
    Daugirdas, John T.
    [J]. JOURNAL OF THE AMERICAN SOCIETY OF NEPHROLOGY, 2015, 26 (03): : 512 - 514