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      Call for Papers: Digital Platforms and Artificial Intelligence in Dementia

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      Is Open Access

      Construction of an Early Alert System for Intradialytic Hypotension before Initiating Hemodialysis Based on Machine Learning

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          Abstract

          Introduction

          Intradialytic hypotension (IDH) is prevalent and associated with high hospitalization and mortality rates. The purpose of this study was to explore the risk factors for IDH and use artificial intelligence to establish an early alert system before hemodialysis sessions to identify patients at high risk of IDH.

          Materials and Methods

          We obtained data on 314,534 hemodialysis sessions conducted at Sichuan Provincial People’s Hospital from the renal disease treatment information system. IDH was defined as a systolic blood pressure drop ≥20 mm Hg, a mean arterial pressure drop ≥10 mm Hg during dialysis, or the occurrence of clinical hypotensive events requiring nursing intervention. After pre-processing, the data were randomly divided into training (80%) and testing (20%) sets. Four interpolation methods, three feature selection methods, and 18 machine learning algorithms were used to construct predictive models. The area under the receiver operating characteristic curve (AUC) was the main indicator for evaluating the performance of the models, while Shapley Additive ExPlanation was used to explain the contribution of each variable to the best predictive model.

          Results

          A total of 3,906 patients and 314,534 dialysis sessions were included, of which 142,237 cases showed IDH (incidence rate, 45.2%). Nineteen parameters were identified through artificial intelligence feature screening. They included age, pre-dialysis weight, dry weight, pre-dialysis blood pressure, heart rate, prescribed ultrafiltration, blood cell counts (neutrophil, lymphocyte, monocyte, eosinophil, lymphocyte, and platelet counts), hematocrit, serum calcium, creatinine, urea, glucose, and uric acid. Random forest, gradient boosting, and logistic regression were the three best models, and the AUCs were 0.812 (95% confidence interval [CI], 0.811–0.813), 0.748 (95% CI, 0.747–0.749), and 0.743 (95% CI, 0.742–0.744), respectively.

          Conclusion

          Our dialysis software-based artificial intelligence alert system can be used to predict IDH occurrence, enabling the initiation of relevant interventions.

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          Most cited references62

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          MissForest--non-parametric missing value imputation for mixed-type data.

          Modern data acquisition based on high-throughput technology is often facing the problem of missing data. Algorithms commonly used in the analysis of such large-scale data often depend on a complete set. Missing value imputation offers a solution to this problem. However, the majority of available imputation methods are restricted to one type of variable only: continuous or categorical. For mixed-type data, the different types are usually handled separately. Therefore, these methods ignore possible relations between variable types. We propose a non-parametric method which can cope with different types of variables simultaneously. We compare several state of the art methods for the imputation of missing values. We propose and evaluate an iterative imputation method (missForest) based on a random forest. By averaging over many unpruned classification or regression trees, random forest intrinsically constitutes a multiple imputation scheme. Using the built-in out-of-bag error estimates of random forest, we are able to estimate the imputation error without the need of a test set. Evaluation is performed on multiple datasets coming from a diverse selection of biological fields with artificially introduced missing values ranging from 10% to 30%. We show that missForest can successfully handle missing values, particularly in datasets including different types of variables. In our comparative study, missForest outperforms other methods of imputation especially in data settings where complex interactions and non-linear relations are suspected. The out-of-bag imputation error estimates of missForest prove to be adequate in all settings. Additionally, missForest exhibits attractive computational efficiency and can cope with high-dimensional data. The package missForest is freely available from http://stat.ethz.ch/CRAN/. stekhoven@stat.math.ethz.ch; buhlmann@stat.math.ethz.ch
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            KDOQI Clinical Practice Guideline for Hemodialysis Adequacy: 2015 update.

            (2015)
            The National Kidney Foundation's Kidney Disease Outcomes Quality Initiative (KDOQI) has provided evidence-based guidelines for all stages of chronic kidney disease (CKD) and related complications since 1997. The 2015 update of the KDOQI Clinical Practice Guideline for Hemodialysis Adequacy is intended to assist practitioners caring for patients in preparation for and during hemodialysis. The literature reviewed for this update includes clinical trials and observational studies published between 2000 and March 2014. New topics include high-frequency hemodialysis and risks; prescription flexibility in initiation timing, frequency, duration, and ultrafiltration rate; and more emphasis on volume and blood pressure control. Appraisal of the quality of the evidence and the strength of recommendations followed the Grading of Recommendation Assessment, Development, and Evaluation (GRADE) approach. Limitations of the evidence are discussed and specific suggestions are provided for future research.
              • Record: found
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              Artificial intelligence in medicine.

              Artificial intelligence is a branch of computer science capable of analysing complex medical data. Their potential to exploit meaningful relationship with in a data set can be used in the diagnosis, treatment and predicting outcome in many clinical scenarios. Medline and internet searches were carried out using the keywords 'artificial intelligence' and 'neural networks (computer)'. Further references were obtained by cross-referencing from key articles. An overview of different artificial intelligent techniques is presented in this paper along with the review of important clinical applications. The proficiency of artificial intelligent techniques has been explored in almost every field of medicine. Artificial neural network was the most commonly used analytical tool whilst other artificial intelligent techniques such as fuzzy expert systems, evolutionary computation and hybrid intelligent systems have all been used in different clinical settings. Artificial intelligence techniques have the potential to be applied in almost every field of medicine. There is need for further clinical trials which are appropriately designed before these emergent techniques find application in the real clinical setting.

                Author and article information

                Journal
                Kidney Dis (Basel)
                Kidney Dis (Basel)
                KDD
                KDD
                Kidney Diseases
                S. Karger AG (Basel, Switzerland )
                2296-9381
                2296-9357
                23 June 2023
                October 2023
                : 9
                : 5
                : 433-442
                Affiliations
                [a ]Department of Nephrology, Sichuan Provincial People’s Hospital, University of Electronic Science and Technology of China, Chengdu, China
                [b ]Department of Pharmacy, Sichuan Provincial People’s Hospital, University of Electronic Science and Technology of China, Chengdu, China
                [c ]Department of Nephrology, Affiliated Hospital of Southwest Medical University, Luzhou, China
                Author notes
                Correspondence to: Rongsheng Tong, 318004031@ 123456qq.com or Xingwei Wu, wuxingwei@ 123456med.uestc.edu.cn or Guisen Li, guisenli@ 123456163.com

                Daqing Hong, Huan Chang and Xin He have contributed equally to this work.

                Article
                531619
                10.1159/000531619
                10601920
                37901708
                3d50049d-c6ce-4993-8a9f-b196188d399c
                © 2023 The Author(s). Published by S. Karger AG, Basel

                This article is licensed under the Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC) ( http://www.karger.com/Services/OpenAccessLicense). Usage and distribution for commercial purposes requires written permission.

                History
                : 20 October 2022
                : 5 June 2023
                : 2023
                Page count
                Figures: 2, Tables: 4, References: 62, Pages: 9
                Funding
                This study was supported by the Sichuan Hemodialysis Quality Control Platform (Project of the Sichuan Provincial Department of Science and Technology 2019JDPT0007), the impact of an information-based intelligent expert support system on the compliance rate of renal anemia in hemodialysis patients: a multicenter cluster randomized controlled practical clinical study (China International Medical Exchange Foundation Renal Anemia Research Fund), research based on the application of a hemodialysis cloud platform and computer-assisted management (China Healthcare International Exchange Promotion Association Nephropathy Prevention and Treatment Alliance Chinese Nephrology Young Physician Research Fund Excellent Project), Key R&D Projects in Sichuan Province (2019YFS0538), the Medical Engineering Joint Fund of UESTC (ZYGX2021YGLH012), and Key Projects of Sichuan Provincial People’s Hospital (2020LZ02). The funders had no role in study design, data collection or analysis, decision to publish, or preparation of the manuscript.
                Categories
                Research Article

                intradialytic hypotension,hemodialysis,alert system,artificial intelligence,machine learning

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