Real-time prediction of intradialytic hypotension using machine learning and cloud computing infrastructure

Author:

Zhang Hanjie1,Wang Lin-Chun1,Chaudhuri Sheetal23,Pickering Aaron4,Usvyat Len2,Larkin John2,Waguespack Pete5,Kuang Zuwen5,Kooman Jeroen P3,Maddux Franklin W2,Kotanko Peter16

Affiliation:

1. Renal Research Institute , New York, NY , USA

2. Fresenius Medical Care, Global Medical Office , Waltham, MA , USA

3. Maastricht University Medical Center , Maastricht , The Netherlands

4. Fresenius Medical Care, Data Solutions , Berlin , Germany

5. Fresenius Medical Care, Digital Technology & Innovation , Waltham, MA , USA

6. Icahn School of Medicine at Mount Sinai , New York, NY , USA

Abstract

ABSTRACT Background In maintenance hemodialysis patients, intradialytic hypotension (IDH) is a frequent complication that has been associated with poor clinical outcomes. Prediction of IDH may facilitate timely interventions and eventually reduce IDH rates. Methods We developed a machine learning model to predict IDH in in-center hemodialysis patients 15–75 min in advance. IDH was defined as systolic blood pressure (SBP) <90 mmHg. Demographic, clinical, treatment-related and laboratory data were retrieved from electronic health records and merged with intradialytic machine data that were sent in real-time to the cloud. For model development, dialysis sessions were randomly split into training (80%) and testing (20%) sets. The area under the receiver operating characteristic curve (AUROC) was used as a measure of the model's predictive performance. Results We utilized data from 693 patients who contributed 42 656 hemodialysis sessions and 355 693 intradialytic SBP measurements. IDH occurred in 16.2% of hemodialysis treatments. Our model predicted IDH 15–75 min in advance with an AUROC of 0.89. Top IDH predictors were the most recent intradialytic SBP and IDH rate, as well as mean nadir SBP of the previous 10 dialysis sessions. Conclusions Real-time prediction of IDH during an ongoing hemodialysis session is feasible and has a clinically actionable predictive performance. If and to what degree this predictive information facilitates the timely deployment of preventive interventions and translates into lower IDH rates and improved patient outcomes warrants prospective studies.

Publisher

Oxford University Press (OUP)

Subject

Transplantation,Nephrology

Cited by 4 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. AI-Driven Cloud Computing to Revolutionize Industries and Overcome Challenges;Emerging Trends in Cloud Computing Analytics, Scalability, and Service Models;2024-03-22

2. Is generative artificial intelligence the next step toward a personalized hemodialysis?;Revista de investigaci�n Cl�nica;2023-12-20

3. Feedback control in hemodialysis;Seminars in Dialysis;2023-11-23

4. Real-time dual prediction of intradialytic hypotension and hypertension using an explainable deep learning model;Scientific Reports;2023-10-23

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