Trivedi Madhukar H, Claassen Cynthia A, Grannemann Bruce D, Kashner T Michael, Carmody Thomas J, Daly Ella, Kern Janet K
Department of Psychiatry, The University of Texas Southwestern Medical Center, 5323 Harry Hines Blvd., Dallas, TX 75390-9119, USA.
Contemp Clin Trials. 2007 Feb;28(2):192-212. doi: 10.1016/j.cct.2006.08.005. Epub 2006 Aug 16.
Effective treatments for major depressive disorder have been available for 35 years, yet inadequate pharmacotherapy continues to be widespread leading to suboptimal outcomes. Evidence-based medication algorithms have the potential to bring much-needed improvement in effectiveness of antidepressant treatment in "real-world" clinical settings. Project IMPACTS (Implementation of Algorithms using Computerized Treatment Systems) addresses the critical question of how best to facilitate integration of depression treatment algorithms into routine care. It tests an algorithm implemented through a computerized decision support system using a measurement-based care approach for depression against a paper-and-pencil version of the same algorithm and non-algorithm-based, specialist-delivered usual care. This paper reviews issues related to the Project IMPACTS study rationale, design, and procedures. Patient outcomes include symptom severity, social and work function, and quality of life. The economic impact of treatment is assessed in terms of health care utilization and cost. Data collected on physician behavior include degree of adherence to guidelines and physician attitudes about the perceived utility, ease of use, and self-reported effect of the use of algorithms on workload. Novel features of the design include a two-tiered study enrollment procedure, which initially enroll physicians as subjects, and then following recruitment of physicians, enrollment of subjects takes place based initially on an independent assessment by study staff to determine study eligibility. The study utilizes brief, easy-to-use symptom severity measures that facilitate physician decision making, and it employs a validated, phone-based, follow-up assessment protocol in order to minimize missing data, a problem common in public sector and longitudinal mental health studies. IMPACTS will assess the success of algorithm implementation and subsequent physician adherence using study-developed criteria and related statistical approaches. These new procedures and data points will also allow a more refined assessment of algorithm-driven treatment in the future.
有效的重度抑郁症治疗方法已经出现35年了,但药物治疗不足的情况仍然普遍存在,导致治疗效果不理想。基于证据的药物治疗算法有潜力在“现实世界”的临床环境中显著提高抗抑郁治疗的有效性。IMPACTS项目(使用计算机化治疗系统实施算法)解决了如何最好地促进将抑郁症治疗算法整合到常规护理中的关键问题。该项目通过计算机化决策支持系统实施一种算法,并采用基于测量的护理方法治疗抑郁症,将其与同一算法的纸质版本以及基于非算法的、由专家提供的常规护理进行对比测试。本文回顾了与IMPACTS项目的研究原理、设计和程序相关的问题。患者的治疗结果包括症状严重程度、社交和工作功能以及生活质量。从医疗保健利用率和成本方面评估治疗的经济影响。收集到的关于医生行为的数据包括对指南的遵守程度以及医生对算法的感知效用、易用性和使用算法对工作量的自我报告影响的态度。该设计的新颖之处包括一个两层的研究招募程序,首先招募医生作为受试者,然后在招募医生之后,受试者的招募最初基于研究人员的独立评估来确定研究资格。该研究使用简短、易于使用的症状严重程度测量方法,以方便医生做出决策,并且采用经过验证的基于电话的随访评估方案,以尽量减少缺失数据,这是公共部门和纵向心理健康研究中常见的问题。IMPACTS项目将使用研究制定的标准和相关统计方法评估算法实施的成功率以及随后医生的依从性。这些新的程序和数据点也将使未来对算法驱动治疗的评估更加精确。