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
Department of Public Health Sciences, University of North Carolina at Charlotte (UNC Charlotte), Charlotte, NC 28223, USA.
School of Data Science, University of North Carolina at Charlotte (UNC Charlotte), Charlotte, NC 28223, USA.
Healthcare (Basel). 2024 May 10;12(10):983. doi: 10.3390/healthcare12100983.
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.
医学编码通过患者信息记录的精确性影响患者护理质量、支付方报销以及系统可靠性。编码特异性不足会在行政和患者层面产生重大后果。因此需要识别和/或加强编码特异性实践的模型。临床记录并不总是可用、完整或同质的,在总体层面,评估医疗实践的临床驱动指标在后勤方面不可行,特别是在非集中式医疗服务系统中,和/或对于那些只能获取理赔数据的人来说。需要采用纳入所有可用信息的数据驱动方法来探索编码特异性实践。利用来自一个大型全支付方行政理赔数据集的487775份2022年诊断为痴呆症并出院的个体住院记录,我们使用患者和机构特征拟合逻辑回归模型,以解释痴呆症主要和次要诊断的编码特异性。我们提出了一种两步法,以便灵活地对患者层面的结果进行聚类。然后,在泊松二项式模型中使用模型结果,以识别在整个住院期间对痴呆症诊断的指定过度或不足的机构,这些机构不符合医疗行业标准。结果表明,多种因素与痴呆症编码特异性显著相关,尤其是对于痴呆症的主要诊断(AUC = 0.727)。通过美国地图,在设施样本和地理空间上展示了这种新型风险调整指标的实际应用。本研究的结果为医疗机构提供了一个基准,用于评估编码特异性实践并制定质量改进措施,以符合医疗行业标准,最终有助于提高患者护理质量和医疗系统可靠性。