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Catching up on health outcomes: the Texas Medication Algorithm Project.

机译:赶上健康结果:德州药物治疗算法项目。

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OBJECTIVE: To develop a statistic measuring the impact of algorithm-driven disease management programs on outcomes for patients with chronic mental illness that allowed for treatment-as-usual controls to "catch up" to early gains of treated patients. DATA SOURCES/STUDY SETTING: Statistical power was estimated from simulated samples representing effect sizes that grew, remained constant, or declined following an initial improvement. Estimates were based on the Texas Medication Algorithm Project on adult patients (age > or = 18) with bipolar disorder (n = 267) who received care between 1998 and 2000 at 1 of 11 clinics across Texas. STUDY DESIGN: Study patients were assessed at baseline and three-month follow-up for a minimum of one year. Program tracks were assigned by clinic. DATA COLLECTION/EXTRACTION METHODS: Hierarchical linear modeling was modified to account for declining-effects. Outcomes were based on 30-item Inventory for Depression Symptomatology-Clinician Version. PRINCIPAL FINDINGS: Declining-effect analyses had significantly greater power detecting program differences than traditional growth models in constant and declining-effects cases. Bipolar patients with severe depressive symptoms in an algorithm-driven, disease management program reported fewer symptoms after three months, with treatment-as-usual controls "catching up" within one year. CONCLUSIONS: In addition to psychometric properties, data collection design, and power, investigators should consider how outcomes unfold over time when selecting an appropriate statistic to evaluate service interventions. Declining-effect analyses may be applicable to a wide range of treatment and intervention trials.
机译:目的:开发一种统计数据,以衡量算法驱动的疾病管理计划对慢性精神疾病患者结局的影响,从而允许照常治疗控制措施“赶上”治疗患者的早期获益。数据来源/研究设置:统计功效是根据模拟样本估算的,该样本代表了随着初始改善而增长,保持恒定或下降的效应大小。估算是基于《德克萨斯药物治疗算法项目》针对患有双相情感障碍(n = 267)的成年患者(年龄≥18)在1998年至2000年之间在德克萨斯州11家诊所中的1家接受过护理的。研究设计:在基线和三个月的随访中对研究患者进行至少一年的评估。程序轨道由诊所分配。数据收集/提取方法:修改了分层线性建模以解决下降的影响。结果基于抑郁症症状-临床医生版本的30个项目的清单。主要发现:在恒定和下降效果的情况下,下降效果分析的功率检测程序差异明显大于传统的增长模型。在算法驱动的疾病管理程序中,患有严重抑郁症状的双相情感障碍患者在三个月后报告的症状较少,通常治疗的对照在一年内就“赶上了”。结论:除了心理测量特性,数据收集设计和功能外,研究人员在选择适当的统计数据来评估服务干预措施时,还应考虑结果如何随时间变化。效果下降分析可能适用于各种治疗和干预试验。

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