Literature DB >> 22711750

An evidence-based score to detect prevalent peripheral artery disease (PAD).

Sue Duval1, Joseph M Massaro, Michael R Jaff, William E Boden, Mark J Alberts, Robert M Califf, Kim A Eagle, Ralph B D'Agostino, Alison Pedley, Gregg C Fonarow, Joanne M Murabito, P Gabriel Steg, Deepak L Bhatt, Alan T Hirsch.   

Abstract

Detection of peripheral artery disease (PAD) typically entails collection of medical history, physical examination, and noninvasive imaging, but whether a risk factor-based model has clinical utility in population screening is unclear. Our objective was to derive and validate a new score for estimating PAD probability in individuals or populations. PAD presence was determined by a history of previous or current intermittent claudication associated with an ankle-brachial index (ABI) of < 0.9 or previous lower extremity arterial intervention. Multivariable stepwise logistic regression identified cross-sectional correlates of PAD from demographic, clinical, and laboratory variables. Analyses were derived from 18,049 US REACH (REduction of Atherothrombosis for Continued Health) Registry outpatients with a complete baseline risk factor profile (enrolled from December 2003 to June 2004). Model performance was assessed internally using 10-fold cross validation, and effect estimates were used to generate the score. The model was externally validated using the Framingham Offspring Study. Age, sex, smoking, diabetes mellitus, body mass index, hypertension stage, and history of heart failure, coronary artery disease, and cerebrovascular disease were predictive of PAD prevalence. The model had reasonable discrimination on derivation and internal validation (c-statistic = 0.61 and 0.60, respectively) and external validation (c-statistic = 0.63 [ABI < 0.9] or 0.64 [clinical PAD]). The model-estimated PAD prevalence varied more than threefold from lowest to highest decile (range, 4.5-16.7) and corresponded closely with actual PAD prevalence in each population. In conclusion, this new tool uses clinical variables to estimate PAD prevalence. While predictive power may be limited, it may improve PAD detection in vulnerable, at-risk populations.

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Year:  2012        PMID: 22711750     DOI: 10.1177/1358863X12445102

Source DB:  PubMed          Journal:  Vasc Med        ISSN: 1358-863X            Impact factor:   3.239


  8 in total

1.  A clinical and proteomics approach to predict the presence of obstructive peripheral arterial disease: From the Catheter Sampled Blood Archive in Cardiovascular Diseases (CASABLANCA) Study.

Authors:  Cian P McCarthy; Nasrien E Ibrahim; Roland R J van Kimmenade; Hanna K Gaggin; Mandy L Simon; Parul Gandhi; Noreen Kelly; Shweta R Motiwala; Renata Mukai; Craig A Magaret; Grady Barnes; Rhonda F Rhyne; Joseph M Garasic; James L Januzzi
Journal:  Clin Cardiol       Date:  2018-06-14       Impact factor: 2.882

2.  Development of a polygenic risk score to improve detection of peripheral artery disease.

Authors:  Fudi Wang; Ilies Ghanzouri; Nicholas J Leeper; Philip S Tsao; Elsie Gyang Ross
Journal:  Vasc Med       Date:  2022-03-14       Impact factor: 4.739

3.  A risk score assessment tool for peripheral arterial disease in women: From the National Health and Nutrition Examination Survey.

Authors:  Hend Mansoor; Islam Y Elgendy; Renessa S Williams; Verlin W Joseph; Young-Rock Hong; Arch G Mainous
Journal:  Clin Cardiol       Date:  2018-08-17       Impact factor: 2.882

4.  The combination of 9p21.3 genotype and biomarker profile improves a peripheral artery disease risk prediction model.

Authors:  Kelly P Downing; Kevin T Nead; Yoko Kojima; Themistocles Assimes; Lars Maegdefessel; Thomas Quertermous; John P Cooke; Nicholas J Leeper
Journal:  Vasc Med       Date:  2013-12-09       Impact factor: 3.239

5.  The use of machine learning for the identification of peripheral artery disease and future mortality risk.

Authors:  Elsie Gyang Ross; Nigam H Shah; Ronald L Dalman; Kevin T Nead; John P Cooke; Nicholas J Leeper
Journal:  J Vasc Surg       Date:  2016-06-03       Impact factor: 4.268

6.  A Prediction Model for the Peripheral Arterial Disease Using NHANES Data.

Authors:  Yang Zhang; Jinxing Huang; Ping Wang
Journal:  Medicine (Baltimore)       Date:  2016-04       Impact factor: 1.889

Review 7.  Role of Lipid-Lowering Therapy in Peripheral Artery Disease.

Authors:  Agastya D Belur; Aangi J Shah; Salim S Virani; Mounica Vorla; Dinesh K Kalra
Journal:  J Clin Med       Date:  2022-08-19       Impact factor: 4.964

8.  Performance and usability testing of an automated tool for detection of peripheral artery disease using electronic health records.

Authors:  I Ghanzouri; S Amal; V Ho; L Safarnejad; J Cabot; C G Brown-Johnson; N Leeper; S Asch; N H Shah; E G Ross
Journal:  Sci Rep       Date:  2022-08-03       Impact factor: 4.996

  8 in total

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