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Performance of a Mathematical Model to Forecast Lives Saved from HIV Treatment Expansion in Resource-Limited Settings

机译:在资源有限的环境中预测艾滋病毒治疗扩展所挽救的生命的数学模型的性能

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Background. International guidelines recommend HIV treatment expansion in resource-limited settings, but funding availability is uncertain. We evaluated the performance of a model that forecasts lives saved through continued HIV treatment expansion in Haiti. Methods. We developed a computer-based, mathematical model of HIV disease and used incidence density analysis of patient-level Haitian data to derive model parameters for HIV disease progression. We assessed the internal validity of model predictions and internally calibrated model inputs when model predictions did not fit the patient-level data. We then derived uncertain model inputs related to diagnosis and linkage to care, pretreatment retention, and enrollment on HIV treatment through an external calibration process that selected input values by comparing model predictions to Haitian population-level data. Model performance was measured by fit to event-free survival (patient level) and number receiving HIV treatment over time (population level). Results. For a cohort of newly HIV-infected individuals with no access to HIV treatment, the model predicts median AIDS-free survival of 9.0 years precalibration and 6.6 years postcalibration v. 5.8 years (95% confidence interval, 5.1-7.0) from the patient-level data. After internal validation and calibration, 16 of 17 event-free survival measures (94%) had a mean percentage deviation between model predictions and the empiric data of <6%. After external calibration, the percentage deviation between model predictions and population-level data on the number on HIV treatment was <1% over time. Conclusions. Validation and calibration resulted in a good-fitting model appropriate for health policy decision making. Using local data in a policy model-building process is feasible in resource-limited settings.
机译:背景。国际准则建议在资源有限的环境中扩大艾滋病毒治疗的范围,但是资金的可用性尚不确定。我们评估了一个模型的性能,该模型预测了通过在海地继续扩大HIV治疗而挽救的生命。方法。我们开发了基于计算机的HIV疾病数学模型,并使用了对患者水平的海地人数据的发生率密度分析来得出HIV疾病进展的模型参数。当模型预测不适合患者水平的数据时,我们评估了模型预测的内部有效性和内部校准的模型输入。然后,我们通过外部校准过程得出了与诊断和护理联系,治疗前保留和艾滋病治疗登记相关的不确定模型输入,该过程通过将模型预测与海地人口水平数据进行比较来选择输入值。通过适应无事件生存期(患者水平)和一段时间内接受HIV治疗的人数(人群水平)来衡量模型性能。结果。对于一群无法获得HIV治疗的新感染HIV的人群,该模型预测,患者从校准前9.0年和校准后6.6年与5.8年(95%置信区间5.1-7.0)之间的中位数无艾滋病生存时间分别为:级别数据。经过内部验证和校准后,在17种无事件生存措施中,有16种(占94%)在模型预测与经验数据之间的平均百分比偏差小于6%。在进行外部校准之后,模型预测与人群水平数据之间关于HIV治疗数量的百分比偏差随时间的变化<1%。结论。验证和校准形成了适合健康政策决策的良好模型。在资源有限的环境中,在策略模型构建过程中使用本地数据是可行的。

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