Literature DB >> 26844760

Developing EHR-driven heart failure risk prediction models using CPXR(Log) with the probabilistic loss function.

Vahid Taslimitehrani1, Guozhu Dong2, Naveen L Pereira3, Maryam Panahiazar4, Jyotishman Pathak5.   

Abstract

Computerized survival prediction in healthcare identifying the risk of disease mortality, helps healthcare providers to effectively manage their patients by providing appropriate treatment options. In this study, we propose to apply a classification algorithm, Contrast Pattern Aided Logistic Regression (CPXR(Log)) with the probabilistic loss function, to develop and validate prognostic risk models to predict 1, 2, and 5year survival in heart failure (HF) using data from electronic health records (EHRs) at Mayo Clinic. The CPXR(Log) constructs a pattern aided logistic regression model defined by several patterns and corresponding local logistic regression models. One of the models generated by CPXR(Log) achieved an AUC and accuracy of 0.94 and 0.91, respectively, and significantly outperformed prognostic models reported in prior studies. Data extracted from EHRs allowed incorporation of patient co-morbidities into our models which helped improve the performance of the CPXR(Log) models (15.9% AUC improvement), although did not improve the accuracy of the models built by other classifiers. We also propose a probabilistic loss function to determine the large error and small error instances. The new loss function used in the algorithm outperforms other functions used in the previous studies by 1% improvement in the AUC. This study revealed that using EHR data to build prediction models can be very challenging using existing classification methods due to the high dimensionality and complexity of EHR data. The risk models developed by CPXR(Log) also reveal that HF is a highly heterogeneous disease, i.e., different subgroups of HF patients require different types of considerations with their diagnosis and treatment. Our risk models provided two valuable insights for application of predictive modeling techniques in biomedicine: Logistic risk models often make systematic prediction errors, and it is prudent to use subgroup based prediction models such as those given by CPXR(Log) when investigating heterogeneous diseases.
Copyright © 2016 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Contrast pattern aided logistic regression; Heart failure; Predictive modeling; Survival analysis

Mesh:

Year:  2016        PMID: 26844760      PMCID: PMC4886658          DOI: 10.1016/j.jbi.2016.01.009

Source DB:  PubMed          Journal:  J Biomed Inform        ISSN: 1532-0464            Impact factor:   6.317


  19 in total

1.  Symptom clusters predict event-free survival in patients with heart failure.

Authors:  Eun Kyeung Song; Debra K Moser; Mary K Rayens; Terry A Lennie
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2.  Cluster analysis of symptom occurrence to identify subgroups of heart failure patients: a pilot study.

Authors:  Melody A Hertzog; Bunny Pozehl; Kathleen Duncan
Journal:  J Cardiovasc Nurs       Date:  2010 Jul-Aug       Impact factor: 2.083

Review 3.  Contemporary strategies in the diagnosis and management of heart failure.

Authors:  Shannon M Dunlay; Naveen L Pereira; Sudhir S Kushwaha
Journal:  Mayo Clin Proc       Date:  2014-03-29       Impact factor: 7.616

4.  Prognostic indicators: useful for clinical care?

Authors:  Stephen S Gottlieb
Journal:  J Am Coll Cardiol       Date:  2009-01-27       Impact factor: 24.094

5.  Predictive models in heart failure: who cares?

Authors:  Robert M Califf; Michael J Pencina
Journal:  Circ Heart Fail       Date:  2013-09-01       Impact factor: 8.790

6.  Prediction modeling using EHR data: challenges, strategies, and a comparison of machine learning approaches.

Authors:  Jionglin Wu; Jason Roy; Walter F Stewart
Journal:  Med Care       Date:  2010-06       Impact factor: 2.983

Review 7.  Risk prediction models for mortality in ambulatory patients with heart failure: a systematic review.

Authors:  Ana C Alba; Thomas Agoritsas; Milosz Jankowski; Delphine Courvoisier; Stephen D Walter; Gordon H Guyatt; Heather J Ross
Journal:  Circ Heart Fail       Date:  2013-07-25       Impact factor: 8.790

8.  Prediction of hospitalization due to heart diseases by supervised learning methods.

Authors:  Wuyang Dai; Theodora S Brisimi; William G Adams; Theofanie Mela; Venkatesh Saligrama; Ioannis Ch Paschalidis
Journal:  Int J Med Inform       Date:  2014-10-16       Impact factor: 4.046

9.  Risk factors for pulmonary embolism after hip and knee arthroplasty: a population-based study.

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Review 10.  Factors influencing the predictive power of models for predicting mortality and/or heart failure hospitalization in patients with heart failure.

Authors:  Wouter Ouwerkerk; Adriaan A Voors; Aeilko H Zwinderman
Journal:  JACC Heart Fail       Date:  2014-09-03       Impact factor: 12.035

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  12 in total

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Journal:  J Biomed Inform       Date:  2017-06-27       Impact factor: 6.317

2.  Machine Learning Based Opioid Overdose Prediction Using Electronic Health Records.

Authors:  Xinyu Dong; Sina Rashidian; Yu Wang; Janos Hajagos; Xia Zhao; Richard N Rosenthal; Jun Kong; Mary Saltz; Joel Saltz; Fusheng Wang
Journal:  AMIA Annu Symp Proc       Date:  2020-03-04

3.  Predicting Incident Heart Failure in Women With Machine Learning: The Women's Health Initiative Cohort.

Authors:  Geoffrey H Tison; Robert Avram; Gregory Nah; Liviu Klein; Barbara V Howard; Matthew A Allison; Ramon Casanova; Rachael H Blair; Khadijah Breathett; Randi E Foraker; Jeffrey E Olgin; Nisha I Parikh
Journal:  Can J Cardiol       Date:  2021-08-13       Impact factor: 5.223

4.  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

5.  Latent Patient Cluster Discovery for Robust Future Forecasting and New-Patient Generalization.

Authors:  Ting Qian; Aaron J Masino
Journal:  PLoS One       Date:  2016-09-16       Impact factor: 3.240

6.  A Predictive Model for Medical Events Based on Contextual Embedding of Temporal Sequences.

Authors:  Wael Farhan; Zhimu Wang; Yingxiang Huang; Shuang Wang; Fei Wang; Xiaoqian Jiang
Journal:  JMIR Med Inform       Date:  2016-11-25

7.  Mortality Prediction of Patients With Cardiovascular Disease Using Medical Claims Data Under Artificial Intelligence Architectures: Validation Study.

Authors:  Linh Tran; Lianhua Chi; Alessio Bonti; Mohamed Abdelrazek; Yi-Ping Phoebe Chen
Journal:  JMIR Med Inform       Date:  2021-04-01

8.  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 9.  Heart Failure: Diagnosis, Severity Estimation and Prediction of Adverse Events Through Machine Learning Techniques.

Authors:  Evanthia E Tripoliti; Theofilos G Papadopoulos; Georgia S Karanasiou; Katerina K Naka; Dimitrios I Fotiadis
Journal:  Comput Struct Biotechnol J       Date:  2016-11-17       Impact factor: 7.271

10.  Comparing different supervised machine learning algorithms for disease prediction.

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