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A Data-Driven Approach to Defining Risk-Adjusted Coding Specificity Metrics for a Large U.S. Dementia Patient Cohort.
Richardson, Kaylla; Penumaka, Sankari; Smoot, Jaleesa; Panaganti, Mansi Reddy; Chinta, Indu Radha; Guduri, Devi Priya; Tiyyagura, Sucharitha Reddy; Martin, John; Korvink, Michael; Gunn, Laura H.
Afiliação
  • Richardson K; Department of Public Health Sciences, University of North Carolina at Charlotte (UNC Charlotte), Charlotte, NC 28223, USA.
  • Penumaka S; School of Data Science, University of North Carolina at Charlotte (UNC Charlotte), Charlotte, NC 28223, USA.
  • Smoot J; School of Data Science, University of North Carolina at Charlotte (UNC Charlotte), Charlotte, NC 28223, USA.
  • Panaganti MR; Department of Public Health Sciences, University of North Carolina at Charlotte (UNC Charlotte), Charlotte, NC 28223, USA.
  • Chinta IR; School of Data Science, University of North Carolina at Charlotte (UNC Charlotte), Charlotte, NC 28223, USA.
  • Guduri DP; School of Data Science, University of North Carolina at Charlotte (UNC Charlotte), Charlotte, NC 28223, USA.
  • Tiyyagura SR; School of Data Science, University of North Carolina at Charlotte (UNC Charlotte), Charlotte, NC 28223, USA.
  • Martin J; School of Data Science, University of North Carolina at Charlotte (UNC Charlotte), Charlotte, NC 28223, USA.
  • Korvink M; School of Data Science, University of North Carolina at Charlotte (UNC Charlotte), Charlotte, NC 28223, USA.
  • Gunn LH; ITS Data Science, Premier, Inc., Charlotte, NC 28277, USA.
Healthcare (Basel) ; 12(10)2024 May 10.
Article em En | MEDLINE | ID: mdl-38786394
ABSTRACT
Medical coding impacts patient care quality, payor reimbursement, and system reliability through the precision of patient information documentation. Inadequate coding specificity can have significant consequences at administrative and patient levels. Models to identify and/or enhance coding specificity practices are needed. Clinical records are not always available, complete, or homogeneous, and clinically driven metrics to assess medical practices are not logistically feasible at the population level, particularly in non-centralized healthcare delivery systems and/or for those who only have access to claims data. Data-driven approaches that incorporate all available information are needed to explore coding specificity practices. Using N = 487,775 hospitalization records of individuals diagnosed with dementia and discharged in 2022 from a large all-payor administrative claims dataset, we fitted logistic regression models using patient and facility characteristics to explain the coding specificity of principal and secondary diagnoses of dementia. A two-step approach was produced to allow for the flexible clustering of patient-level outcomes. Model outcomes were then used within a Poisson binomial model to identify facilities that over- or under-specify dementia diagnoses against healthcare industry standards across hospitalizations. The results indicate that multiple factors are significantly associated with dementia coding specificity, especially for principal diagnoses of dementia (AUC = 0.727). The practical use of this novel risk-adjusted metric is demonstrated for a sample of facilities and geospatially via a U.S. map. This study's findings provide healthcare facilities with a benchmark for assessing coding specificity practices and developing quality enhancements to align with healthcare industry standards, ultimately contributing to better patient care and healthcare system reliability.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article