Literature DB >> 34838137

Cardiovascular risk assessment using ASCVD risk score in fibromyalgia: a single-centre, retrospective study using "traditional" case control methodology and "novel" machine learning.

Sandeep Surendran1, C B Mithun1, Merlin Moni2, Arun Tiwari1, Manu Pradeep3.   

Abstract

BACKGROUND: In autoimmune inflammatory rheumatological diseases, routine cardiovascular risk assessment is becoming more important. As an increased cardiovascular disease (CVD) risk is recognized in patients with fibromyalgia (FM), a combination of traditional CVD risk assessment tool with Machine Learning (ML) predictive model could help to identify non-traditional CVD risk factors.
METHODS: This study was a retrospective case-control study conducted at a quaternary care center in India. Female patients diagnosed with FM as per 2016 modified American College of Rheumatology 2010/2011 diagnostic criteria were enrolled; healthy age and gender-matched controls were obtained from Non-communicable disease Initiatives and Research at AMrita (NIRAM) study database. Firstly, FM cases and healthy controls were age-stratified into three categories of 18-39 years, 40-59 years, and ≥ 60 years. A 10 year and lifetime CVD risk was calculated in both cases and controls using the ASCVD calculator. Pearson chi-square test and Fisher's exact were used to compare the ASCVD risk scores of FM patients and controls across the age categories. Secondly, ML predictive models of CVD risk in FM patients were developed. A random forest algorithm was used to develop the predictive models with ASCVD 10 years and lifetime risk as target measures. Model predictive accuracy of the ML models was assessed by accuracy, f1-score, and Area Under 'receiver operating Curve' (AUC). From the final predictive models, we assessed risk factors that had the highest weightage for CVD risk in FM.
RESULTS: A total of 139 FM cases and 1820 controls were enrolled in the study. FM patients in the age group 40-59 years had increased lifetime CVD risk compared to the control group (OR = 1.56, p = 0.043). However, CVD risk was not associated with FM disease severity and disease duration as per the conventional statistical analysis. ML model for 10-year ASCVD risk had an accuracy of 95% with an f1-score of 0.67 and AUC of 0.825. ML model for the lifetime ASCVD risk had an accuracy of 72% with an f1-score of 0.79 and AUC of 0.713. In addition to the traditional risk factors for CVD, FM disease severity parameters were important contributors in the ML predictive models.
CONCLUSION: FM patients of the 40-59 years age group had increased lifetime CVD risk in our study. Although FM disease severity was not associated with high CVD risk as per the conventional statistical analysis of the data, it was among the highest contributor to ML predictive model for CVD risk in FM patients. This also highlights that ML can potentially help to bridge the gap of non-linear risk factor identification.
© 2021. The Author(s).

Entities:  

Keywords:  Cardiovascular diseases; Fibromyalgia; Heart disease risk factors; Machine learning

Mesh:

Year:  2021        PMID: 34838137     DOI: 10.1186/s42358-021-00229-w

Source DB:  PubMed          Journal:  Adv Rheumatol        ISSN: 2523-3106


  17 in total

1.  ACC/AHA/AACVPR/AAFP/ANA concepts for clinician-patient shared accountability in performance measures: a report of the American College of Cardiology/American Heart Association Task Force on Performance Measures.

Authors:  Eric D Peterson; P Michael Ho; Mary Barton; Craig Beam; L Hayley Burgess; Donald E Casey; Joseph P Drozda; Gregg C Fonarow; David Goff; Kathleen L Grady; Dana E King; Marjorie L King; Frederick A Masoudi; David R Nielsen; Stephen Stanko
Journal:  Circulation       Date:  2014-11-03       Impact factor: 29.690

2.  Antiinflammatory Therapy with Canakinumab for Atherosclerotic Disease.

Authors:  Paul M Ridker; Brendan M Everett; Tom Thuren; Jean G MacFadyen; William H Chang; Christie Ballantyne; Francisco Fonseca; Jose Nicolau; Wolfgang Koenig; Stefan D Anker; John J P Kastelein; Jan H Cornel; Prem Pais; Daniel Pella; Jacques Genest; Renata Cifkova; Alberto Lorenzatti; Tamas Forster; Zhanna Kobalava; Luminita Vida-Simiti; Marcus Flather; Hiroaki Shimokawa; Hisao Ogawa; Mikael Dellborg; Paulo R F Rossi; Roland P T Troquay; Peter Libby; Robert J Glynn
Journal:  N Engl J Med       Date:  2017-08-27       Impact factor: 91.245

Review 3.  Machine Learning in Medicine.

Authors:  Rahul C Deo
Journal:  Circulation       Date:  2015-11-17       Impact factor: 29.690

4.  The prevalence and characteristics of fibromyalgia in the general population.

Authors:  F Wolfe; K Ross; J Anderson; I J Russell; L Hebert
Journal:  Arthritis Rheum       Date:  1995-01

Review 5.  Psychophysical and neurochemical abnormalities of pain processing in fibromyalgia.

Authors:  Roland Staud; Michael Spaeth
Journal:  CNS Spectr       Date:  2008-03       Impact factor: 3.790

6.  Fibromyalgia and depression.

Authors:  Richard H Gracely; Marta Ceko; M Catherine Bushnell
Journal:  Pain Res Treat       Date:  2011-11-19

7.  The Prevalence and Characteristics of Fibromyalgia in the 2012 National Health Interview Survey.

Authors:  Brian Walitt; Richard L Nahin; Robert S Katz; Martin J Bergman; Frederick Wolfe
Journal:  PLoS One       Date:  2015-09-17       Impact factor: 3.240

8.  Effects of Concurrent Depressive Symptoms and Perceived Stress on Cardiovascular Risk in Low- and High-Income Participants: Findings From the Reasons for Geographical and Racial Differences in Stroke (REGARDS) Study.

Authors:  Jennifer A Sumner; Yulia Khodneva; Paul Muntner; Nicole Redmond; Marquita W Lewis; Karina W Davidson; Donald Edmondson; Joshua Richman; Monika M Safford
Journal:  J Am Heart Assoc       Date:  2016-10-10       Impact factor: 5.501

9.  Increased Risk of Coronary Heart Disease in Patients with Primary Fibromyalgia and Those with Concomitant Comorbidity-A Taiwanese Population-Based Cohort Study.

Authors:  Chia-Hsien Su; Jiunn-Horng Chen; Joung-Liang Lan; Yu-Chiao Wang; Chun-Hung Tseng; Chung-Yi Hsu; Lichi Huang
Journal:  PLoS One       Date:  2015-09-14       Impact factor: 3.240

10.  Assessment of 2013 AHA/ACC ASCVD risk scores with behavioral characteristics of an urban cohort in India: Preliminary analysis of Noncommunicable disease Initiatives and Research at AMrita (NIRAM) study.

Authors:  Vidya P Menon; Fabia Edathadathil; Dipu Sathyapalan; Merlin Moni; Ann Don; Sabarish Balachandran; Binny Pushpa; Preetha Prasanna; Nithu Sivaram; Anupama Nair; Nithu Vinod; Rekha Jayaprasad; Veena Menon
Journal:  Medicine (Baltimore)       Date:  2016-12       Impact factor: 1.817

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