A Phenotypic Atlas for Huntington Disease Based on Data From the Enroll-HD Cohort Study

被引:2
|
作者
Langbehn, Douglas R. [1 ]
Sathe, Swati S. [2 ]
Loy, Clement [3 ]
Sampaio, Cristina [2 ]
Mccusker, Elizabeth A. [4 ]
机构
[1] Univ Iowa, Dept Psychiat, Biostat, Iowa City, IA 52242 USA
[2] CHDI Management CHDI Fdn, Princeton, NJ USA
[3] Macquarie Univ, Macquarie Med Sch, Sydney, Australia
[4] Univ Sydney, Westmead Hosp, Dept Neurol, Huntington Dis Serv, Sydney, Australia
关键词
IDENTIFICATION; PROGRESSION; ONSET;
D O I
10.1212/NXG.0000000000200111
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
Background and ObjectivesThe variable CAG repeat expansion in the huntingtin gene and its inverse relationship to motor dysfunction onset are fundamental features of Huntington disease (HD). However, the wider phenotype (including non-motor features) at particular CAG lengths, ages, and functional levels is less well-characterized. The large number of participants in the Enroll-HD observational study enables the development of a phenotype atlas that summarizes the range and distribution of HD phenotypes, including outliers and possible clusters, with respect to various CAG repeat lengths, age ranges, and declining functional levels.MethodsEnroll-HD is an ongoing prospective longitudinal observational study that collects natural history data, releasing periodic data sets, in people with HD (PwHD) and controls. Core assessments at annual visits focus on behavioral, cognitive, motor, and functional status. Periodic data set 5, used for the development of the first iteration of the Enroll-HD Phenotype Atlas (EHDPA), included all eligible data collected through October 31, 2020. The atlas is based on subsets (cells) of descriptive data for all motor, cognitive, psychiatric, and functional measures that are routinely collected at most Enroll-HD sites, analyzed by single CAG lengths and 5-year age blocks.ResultsData from 42,840 visits from 15,982 unique PwHD were available for analysis. At baseline, participants had a mean +/- SD age of 48.9 +/- 13.9 years and CAG repeat length of 43.4 +/- 3.6 and 54.1% were female. The EHDPA includes 223 age-by-CAG subsets for CAG repeats between 36 and 69 with five-year age brackets starting from 20-24 years up to 85-89 years. The atlas can be browsed at enroll-hd.org/for-researchers/atlas-of-hd-phenotype/.DiscussionThe EHDPA summarizes the spectrum and distribution of HD phenotypes, including outliers and possible clusters, in all domains of disease involvement for the range of CAG repeat lengths, ages, and functional levels. Its availability in an easy-to-use online format will assist clinicians in tracking disease progression in PwHD by identifying phenotypic features most associated with loss of function and enabling conversations related to prognosis. The observable patterns in the EHDPA should also catalyze more formal multidomain characterization of motor, cognitive, and psychiatric progression and their relationships to functional decline and disease modifiers.Trial Registration InformationEnroll-HD is registered with clinicaltrials.gov: NCT01574053.
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