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未确诊疾病网络申请者的特征:对转诊医疗机构的启示

Characteristics of undiagnosed diseases network applicants: implications for referring providers.

作者信息

Walley Nicole M, Pena Loren D M, Hooper Stephen R, Cope Heidi, Jiang Yong-Hui, McConkie-Rosell Allyn, Sanders Camilla, Schoch Kelly, Spillmann Rebecca C, Strong Kimberly, McCray Alexa T, Mazur Paul, Esteves Cecilia, LeBlanc Kimberly, Wise Anastasia L, Shashi Vandana

机构信息

Division of Medical Genetics, Department of Pediatrics, Duke Health, Box 103857, Durham, NC, 27710, USA.

Department of Allied Health, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA.

出版信息

BMC Health Serv Res. 2018 Aug 22;18(1):652. doi: 10.1186/s12913-018-3458-2.

Abstract

BACKGROUND

The majority of undiagnosed diseases manifest with objective findings that warrant further investigation. The Undiagnosed Diseases Network (UDN) receives applications from patients whose symptoms and signs have been intractable to diagnosis; however, many UDN applicants are affected primarily by subjective symptoms such as pain and fatigue. We sought to characterize presenting symptoms, referral sources, and demographic factors of applicants to the UDN to identify factors that may determine application outcome and potentially differentiate between those with undiagnosed diseases (with more objective findings) and those who are less likely to have an undiagnosed disease (more subjective symptoms).

METHODS

We used a systematic retrospective review of 151 consecutive Not Accepted and 50 randomly selected Accepted UDN applications. The primary outcome was whether an applicant was Accepted, or Not Accepted, and, if accepted, whether or not a diagnosis was made. Objective and subjective symptoms and information on prior specialty consultations were collected from provider referral letters. Demographic data and decision data on network acceptance were gathered from the UDN online portal.

RESULTS

Fewer objective findings and more subjective symptoms were found in the Not Accepted applications. Not Accepted referrals also were from older individuals, reported a shorter period of illness, and were referred to the UDN by their primary care physicians. All of these differences reached statistical significance in comparison with Accepted applications. The frequency of subspecialty consults for diagnostic purposes prior to UDN application was similar in both groups.

CONCLUSIONS

The preponderance of subjective and lack of objective findings in the Not Accepted applications distinguish these from applicants that are accepted for evaluation and diagnostic efforts through the UDN. Not Accepted applicants are referred primarily by their primary care providers after multiple specialist consultations fail to yield answers. Distinguishing between patients with undiagnosed diseases with objective findings and those with primarily subjective findings can delineate patients who would benefit from further diagnostic processes from those who may have functional disorders and need alternative pathways for management of their symptoms.

TRIAL REGISTRATION

clinicaltrials.gov NCT02450851 , posted May 21st 2015.

摘要

背景

大多数未确诊疾病表现出需要进一步调查的客观体征。未确诊疾病网络(UDN)接收那些症状和体征难以诊断的患者的申请;然而,许多UDN申请者主要受疼痛和疲劳等主观症状影响。我们试图描述UDN申请者的症状表现、转诊来源和人口统计学因素,以确定可能决定申请结果的因素,并有可能区分患有未确诊疾病(有更多客观体征)的患者和不太可能患有未确诊疾病(更多主观症状)的患者。

方法

我们对151份连续的未被接受的UDN申请和50份随机选择的被接受的UDN申请进行了系统回顾。主要结果是申请者是否被接受,以及如果被接受,是否做出了诊断。从提供者转诊信中收集客观和主观症状以及先前专科会诊的信息。从UDN在线门户收集人口统计学数据和网络接受的决定数据。

结果

在未被接受的申请中发现的客观体征较少,主观症状较多。未被接受的转诊者也来自年龄较大的个体,报告的病程较短,并且是由他们的初级保健医生转诊到UDN的。与被接受的申请相比,所有这些差异均具有统计学意义。两组在申请UDN之前为诊断目的进行亚专科会诊的频率相似。

结论

未被接受的申请中主观症状占优势且缺乏客观体征,这使其与通过UDN被接受进行评估和诊断的申请者区分开来。未被接受的申请者主要是在多次专科会诊未能得出答案后由其初级保健提供者转诊的。区分有客观体征的未确诊疾病患者和主要有主观体征的患者,可以将可能从进一步诊断过程中受益的患者与可能患有功能障碍且需要替代症状管理途径的患者区分开来。

试验注册

clinicaltrials.gov NCT02450851,于2015年5月21日发布。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c64c/6106923/0078e71d382d/12913_2018_3458_Fig1_HTML.jpg

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