Literature DB >> 30354561

Neural Networks for Prognostication of Patients With Heart Failure.

Jason Hearn1,2, Heather J Ross1, Brigitte Mueller2, Chun-Po Fan2, Edgar Crowdy2, Joe Duhamel1, Mike Walker1, Ana Carolina Alba1, Cedric Manlhiot1,2.   

Abstract

Background Prognostication of heart failure patients from cardiopulmonary exercise test (CPET) currently involves simplification of complex time-series data into summary indices. We hypothesized that prognostication could be improved by considering the totality of the data generated during a CPET, instead of using summary indices alone. Methods and Results Complete data from 1156 CPETs were used to predict clinical deterioration (characterized by initiation of mechanical circulatory support, listing for heart transplantation or mortality) 1 year post-CPET. We compared the prognostic value (area under the receiver operating characteristic curve) of (1) the most predictive summary indices, (2) staged data collected at discrete intervals using multivariable regression models, and (3) breath-by-breath data using a feedforward neural network. The top-performing models were compared with the commonly used CPET risk score, using absolute net reclassification index. All models were trained and assessed using a 100-iteration Monte Carlo cross-validation. A total of 190 (16.4%) patients experienced clinical deterioration. The summary indices demonstrated subpar discriminative value (area under the receiver operating characteristic curve ≤0.800). Each multivariable model outperformed the summary indices, with the neural network incorporating breath-by-breath data achieving the best performance (area under the receiver operating characteristic curve =0.842). When compared with the CPET risk score (area under the receiver operating characteristic curve =0.759), the top-performing model obtained a net reclassification index of 4.9%. Conclusions The current practice of considering summary indices in isolation fails to realize the full value of CPET data. This may lead to less accurate prognostication of patients and in consequence, inaccurate selection of patients for advanced therapy. Clinical practices, like CPET prognostication, must be continuously reevaluated to ensure optimal usage of valuable (and oft-underutilized) data sources.

Entities:  

Keywords:  clinical deterioration; exercise test; heart failure; heart transplantation; machine learning; prognosis

Mesh:

Year:  2018        PMID: 30354561     DOI: 10.1161/CIRCHEARTFAILURE.118.005193

Source DB:  PubMed          Journal:  Circ Heart Fail        ISSN: 1941-3289            Impact factor:   8.790


  9 in total

Review 1.  Utilizing Artificial Intelligence to Enhance Health Equity Among Patients with Heart Failure.

Authors:  Amber E Johnson; LaPrincess C Brewer; Melvin R Echols; Sula Mazimba; Rashmee U Shah; Khadijah Breathett
Journal:  Heart Fail Clin       Date:  2022-03-04       Impact factor: 3.179

2.  Predicting mortality and hospitalization in heart failure using machine learning: A systematic literature review.

Authors:  Dineo Mpanya; Turgay Celik; Eric Klug; Hopewell Ntsinjana
Journal:  Int J Cardiol Heart Vasc       Date:  2021-04-12

3.  The Need for Ethnoracial Equity in Artificial Intelligence for Diabetes Management: Review and Recommendations.

Authors:  Quynh Pham; Anissa Gamble; Jason Hearn; Joseph A Cafazzo
Journal:  J Med Internet Res       Date:  2021-02-10       Impact factor: 5.428

4.  Systematic literature review of machine learning methods used in the analysis of real-world data for patient-provider decision making.

Authors:  Alan Brnabic; Lisa M Hess
Journal:  BMC Med Inform Decis Mak       Date:  2021-02-15       Impact factor: 2.796

5.  Machine learning for subtype definition and risk prediction in heart failure, acute coronary syndromes and atrial fibrillation: systematic review of validity and clinical utility.

Authors:  Amitava Banerjee; Suliang Chen; Ghazaleh Fatemifar; Mohamad Zeina; R Thomas Lumbers; Johanna Mielke; Simrat Gill; Dipak Kotecha; Daniel F Freitag; Spiros Denaxas; Harry Hemingway
Journal:  BMC Med       Date:  2021-04-06       Impact factor: 11.150

Review 6.  Artificial Intelligence: A Shifting Paradigm in Cardio-Cerebrovascular Medicine.

Authors:  Vida Abedi; Seyed-Mostafa Razavi; Ayesha Khan; Venkatesh Avula; Aparna Tompe; Asma Poursoroush; Alireza Vafaei Sadr; Jiang Li; Ramin Zand
Journal:  J Clin Med       Date:  2021-12-06       Impact factor: 4.241

Review 7.  Decision Support Systems in HF based on Deep Learning Technologies.

Authors:  Marco Penso; Sarah Solbiati; Sara Moccia; Enrico G Caiani
Journal:  Curr Heart Fail Rep       Date:  2022-02-10

8.  Neural network methods for diagnosing patient conditions from cardiopulmonary exercise testing data.

Authors:  Donald E Brown; Suchetha Sharma; James A Jablonski; Arthur Weltman
Journal:  BioData Min       Date:  2022-08-13       Impact factor: 4.079

9.  Feasibility of the deep learning method for estimating the ventilatory threshold with electrocardiography data.

Authors:  Kotaro Miura; Shinichi Goto; Yoshinori Katsumata; Hidehiko Ikura; Yasuyuki Shiraishi; Kazuki Sato; Keiichi Fukuda
Journal:  NPJ Digit Med       Date:  2020-10-29
  9 in total

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