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针对特定人群的多媒体患者参与模式与个体化多媒体患者参与模式对提高初级保健中抑郁识别和治疗效果的比较:AMEP2 研究的随机对照试验方案。

Targeted versus tailored multimedia patient engagement to enhance depression recognition and treatment in primary care: randomized controlled trial protocol for the AMEP2 study.

机构信息

UC Davis Department of Pediatrics and Center for Healthcare Policy and Research, 2103 Stockton Blvd Suite 2224, Sacramento, CA 95817, USA.

出版信息

BMC Health Serv Res. 2013 Apr 17;13:141. doi: 10.1186/1472-6963-13-141.

Abstract

BACKGROUND

Depression in primary care is common, yet this costly and disabling condition remains underdiagnosed and undertreated. Persisting gaps in the primary care of depression are due in part to patients' reluctance to bring depressive symptoms to the attention of their primary care clinician and, when depression is diagnosed, to accept initial treatment for the condition. Both targeted and tailored communication strategies offer promise for fomenting discussion and reducing barriers to appropriate initial treatment of depression.

METHODS/DESIGN: The Activating Messages to Enhance Primary Care Practice (AMEP2) Study is a stratified randomized controlled trial comparing two computerized multimedia patient interventions -- one targeted (to patient gender and income level) and one tailored (to level of depressive symptoms, visit agenda, treatment preferences, depression causal attributions, communication self-efficacy and stigma)-- and an attention control. AMEP2 consists of two linked sub-studies, one focusing on patients with significant depressive symptoms (Patient Health Questionnaire-9 [PHQ-9] scores ≥ 5), the other on patients with few or no depressive symptoms (PHQ-9 < 5). The first sub-study examined effectiveness of the interventions; key outcomes included delivery of components of initial depression care (antidepressant prescription or mental health referral). The second sub-study tracked potential hazards (clinical distraction and overtreatment). A telephone interview screening procedure assessed patients for eligibility and oversampled patients with significant depressive symptoms. Sampled, consenting patients used computers to answer survey questions, be randomized, and view assigned interventions just before scheduled primary care office visits. Patient surveys were also collected immediately post-visit and 12 weeks later. Physicians completed brief reporting forms after each patient's index visit. Additional data were obtained from medical record abstraction and visit audio recordings. Of 6,191 patients assessed, 867 were randomized and included in analysis, with 559 in the first sub-study and 308 in the second.

DISCUSSION

Based on formative research, we developed two novel multimedia programs for encouraging patients to discuss depressive symptoms with their primary care clinicians. Our computer-based enrollment and randomization procedures ensured that randomization was fully concealed and data missingness minimized. Analyses will focus on the interventions' potential benefits among depressed persons, and the potential hazards among the non-depressed.

TRIAL REGISTRATION

ClinicialTrials.gov Identifier: NCT01144104.

摘要

背景

初级保健中的抑郁很常见,但这种代价高昂且使人丧失能力的疾病仍然未被充分诊断和治疗。初级保健中持续存在的抑郁差距部分归因于患者不愿向初级保健临床医生提及抑郁症状,以及在诊断出抑郁后不愿接受初始治疗。有针对性和定制化的沟通策略有望促进讨论并减少适当初始治疗抑郁的障碍。

方法/设计:激活消息以增强初级保健实践(AMEP2)研究是一项分层随机对照试验,比较了两种计算机多媒体患者干预措施——一种针对(患者性别和收入水平),一种针对(抑郁症状水平、就诊议程、治疗偏好、抑郁归因、沟通自我效能和耻辱感)——和一个注意力对照。AMEP2 由两个相互关联的子研究组成,一个侧重于有明显抑郁症状的患者(患者健康问卷-9 [PHQ-9] 得分≥5),另一个侧重于抑郁症状少或没有的患者(PHQ-9<5)。第一个子研究检验了干预措施的有效性;主要结果包括提供初始抑郁护理的各个组成部分(抗抑郁药处方或心理健康转介)。第二个子研究跟踪了潜在的危险(临床分心和过度治疗)。电话访谈筛选程序评估患者是否符合入选条件,并对有明显抑郁症状的患者进行了过度抽样。抽样并同意的患者使用计算机在预约初级保健办公室就诊前回答调查问题、进行随机分组并查看分配的干预措施。患者调查也在就诊后立即和 12 周后进行收集。医生在每位患者的就诊后填写简短的报告表。还从病历摘录和就诊录音中获取了额外的数据。在评估的 6191 名患者中,有 867 名被随机分配并纳入分析,其中 559 名在第一个子研究中,308 名在第二个子研究中。

讨论

基于形成性研究,我们开发了两种用于鼓励患者与初级保健临床医生讨论抑郁症状的新型多媒体程序。我们基于计算机的入组和随机程序确保了随机化完全保密,并最大限度地减少了数据缺失。分析将重点关注干预措施在抑郁人群中的潜在益处,以及在非抑郁人群中的潜在危害。

试验注册

ClinicalTrials.gov 标识符:NCT01144104。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/13ff/3637592/813afcce9e67/1472-6963-13-141-1.jpg

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