OBJECTIVES: To determine whether adding selfreported health and functional status data to a diagnostic risk-score model explains additional variance in predicting inpatient admissions and costs. STUDY DESIGN: Retrospective observational analysis. METHODS: We used data from a Health Status Questionnaire (HSQ), completed by 6407 Kaiser Permanente Northwest Medicare patients between December 2006 and October 2008. We used answers from 3 items on the HSQ: (1) General Self-rated Health score, (2) needing help with 1 or more activities of daily living, and (3) having a bothersome health condition. We calculated a DxCG relative risk score from utilization information in the year prior to the survey, using electronic medical records. We compared: (1) DxCG as the sole independent variable and (2) DxCG plus the 3 items as independent variables. We estimated area under the curve (AUC) for each model. Any inpatient admission (yes/no) and being in the top 10% of costs (in the year after survey) were the dependent variables for the first and second logistic regression models, respectively. RESULTS: The 3 items explained an additional 2.8% and 4.0% of variance for inpatient admissions and top 10% of costs,respectively, in addition to the variance explained by the DxCG score alone. For DxCG alone, the AUC was 0.686 (95% confidence interval [CI] 0.663-0.710) and 0.741 (95% CI 0.719- 0.764), respectively, for inpatient admissions and top 10% of costs and improved to 0.709 (95% CI 0.687-0.730) and 0.770 (95% CI 0.749-0.790) when the 3 self-reported items were added. CONCLUSIONS: Using self-reported health information improved the predictive power of a DxCG model to forecast inpatient admissions and patient cost-tier.
OBJECTIVES: To determine whether adding selfreported health and functional status data to a diagnostic risk-score model explains additional variance in predicting inpatient admissions and costs. STUDY DESIGN: Retrospective observational analysis. METHODS: We used data from a Health Status Questionnaire (HSQ), completed by 6407 Kaiser Permanente Northwest Medicare patients between December 2006 and October 2008. We used answers from 3 items on the HSQ: (1) General Self-rated Health score, (2) needing help with 1 or more activities of daily living, and (3) having a bothersome health condition. We calculated a DxCG relative risk score from utilization information in the year prior to the survey, using electronic medical records. We compared: (1) DxCG as the sole independent variable and (2) DxCG plus the 3 items as independent variables. We estimated area under the curve (AUC) for each model. Any inpatient admission (yes/no) and being in the top 10% of costs (in the year after survey) were the dependent variables for the first and second logistic regression models, respectively. RESULTS: The 3 items explained an additional 2.8% and 4.0% of variance for inpatient admissions and top 10% of costs,respectively, in addition to the variance explained by the DxCG score alone. For DxCG alone, the AUC was 0.686 (95% confidence interval [CI] 0.663-0.710) and 0.741 (95% CI 0.719- 0.764), respectively, for inpatient admissions and top 10% of costs and improved to 0.709 (95% CI 0.687-0.730) and 0.770 (95% CI 0.749-0.790) when the 3 self-reported items were added. CONCLUSIONS: Using self-reported health information improved the predictive power of a DxCG model to forecast inpatient admissions and patient cost-tier.
Authors: Elizabeth A Bayliss; Jennifer L Ellis; Mary Jo Strobel; Deanna B Mcquillan; Irena B Petsche; Jennifer C Barrow; Arne Beck Journal: Perm J Date: 2015-06-01
Authors: Karen J Blumenthal; Yuchiao Chang; Timothy G Ferris; Jenna C Spirt; Christine Vogeli; Neil Wagle; Joshua P Metlay Journal: J Gen Intern Med Date: 2017-03-24 Impact factor: 5.128
Authors: Sarah L Szanton; Qian-Li Xue; Bruce Leff; Jack Guralnik; Jennifer L Wolff; Elizabeth K Tanner; Cynthia Boyd; Roland J Thorpe; David Bishai; Laura N Gitlin Journal: JAMA Intern Med Date: 2019-02-01 Impact factor: 21.873