Literature DB >> 36168399

A novel method for handling pre-existing conditions in multivariate prediction model development for COVID-19 death in the Department of Veterans Affairs.

Heather M Campbell1,2, Allison E Murata1, Jenny T Mao3,4, Benjamin McMahon5, Glen H Murata3.   

Abstract

Many mathematical models have been proposed to predict death following the Coronavirus Disease 2019 (COVID-19); all started with comorbidity subsets for this still-little understood disease. Thus, we derived a novel predicted probability of death model (PDeathDx) upon all diagnostic codes documented in the Department of Veterans Affairs. We present the conceptual underpinnings and analytic approach in estimating the independent contribution of pre-existing conditions. This is the largest study to-date following patients with COVID-19 to predict mortality. Cases were identified with at least one positive nucleic acid amplification test. Starting in 1997, we use diagnoses from the first time a patient sought care until 14 days before a positive nucleic acid amplification test. We demonstrate the clear advantage of using an unrestricted set of pre-existing conditions to model COVID-19 mortality, as models using conventional comorbidity indices often assign little weight or usually do not include some of the highest risk conditions; the same is true of conditions associated with COVID-19 severity. Our findings suggest that it is risky to pick comorbidities for analysis without a systematic review of all those experienced by the cohort. Unlike conventional approaches, our comprehensive methodology provides the flexibility that has been advocated for comorbidity indices since 1993; such an approach can be readily adapted for other diseases and outcomes. With our comorbidity risk adjustment approach outperforming conventional indices for predicting COVID-19 mortality, it shows promise for predicting outcomes for other conditions of interest. Published by Oxford University Press 2022.

Entities:  

Keywords:  COVID-19; big data; prognosis; risk adjustment; veterans

Year:  2022        PMID: 36168399      PMCID: PMC9384686          DOI: 10.1093/biomethods/bpac017

Source DB:  PubMed          Journal:  Biol Methods Protoc        ISSN: 2396-8923


  19 in total

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4.  Why Summary Comorbidity Measures Such As the Charlson Comorbidity Index and Elixhauser Score Work.

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Authors:  Yan Xie; Benjamin Bowe; Geetha Maddukuri; Ziyad Al-Aly
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8.  Clinical Characterization and Prediction of Clinical Severity of SARS-CoV-2 Infection Among US Adults Using Data From the US National COVID Cohort Collaborative.

Authors:  Tellen D Bennett; Richard A Moffitt; Janos G Hajagos; Benjamin Amor; Adit Anand; Mark M Bissell; Katie Rebecca Bradwell; Carolyn Bremer; James Brian Byrd; Alina Denham; Peter E DeWitt; Davera Gabriel; Brian T Garibaldi; Andrew T Girvin; Justin Guinney; Elaine L Hill; Stephanie S Hong; Hunter Jimenez; Ramakanth Kavuluru; Kristin Kostka; Harold P Lehmann; Eli Levitt; Sandeep K Mallipattu; Amin Manna; Julie A McMurry; Michele Morris; John Muschelli; Andrew J Neumann; Matvey B Palchuk; Emily R Pfaff; Zhenglong Qian; Nabeel Qureshi; Seth Russell; Heidi Spratt; Anita Walden; Andrew E Williams; Jacob T Wooldridge; Yun Jae Yoo; Xiaohan Tanner Zhang; Richard L Zhu; Christopher P Austin; Joel H Saltz; Ken R Gersing; Melissa A Haendel; Christopher G Chute
Journal:  JAMA Netw Open       Date:  2021-07-01

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Journal:  Nat Commun       Date:  2020-09-07       Impact factor: 14.919

10.  Development and validation of a 30-day mortality index based on pre-existing medical administrative data from 13,323 COVID-19 patients: The Veterans Health Administration COVID-19 (VACO) Index.

Authors:  Joseph T King; James S Yoon; Christopher T Rentsch; Janet P Tate; Lesley S Park; Farah Kidwai-Khan; Melissa Skanderson; Ronald G Hauser; Daniel A Jacobson; Joseph Erdos; Kelly Cho; Rachel Ramoni; David R Gagnon; Amy C Justice
Journal:  PLoS One       Date:  2020-11-11       Impact factor: 3.240

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