Natural history and epidemiology of the spinocerebellar ataxias: Insights from the first description to nowadays

脊髓小脑共济失调 自然史 流行病学 自然(考古学) 医学 精神科 历史 共济失调 病理 内科学 考古
作者
Stephanie Suzanne de Oliveira Scott,José Luiz Pedroso,Orlando Graziani Póvoas Barsottini,Marcondes Cavalcante França-Junior,Pedro Braga‐Neto
出处
期刊:Journal of the Neurological Sciences [Elsevier]
卷期号:417: 117082-117082 被引量:29
标识
DOI:10.1016/j.jns.2020.117082
摘要

Spinocerebellar ataxias (SCAs) are a heterogeneous group of autosomal dominant inherited diseases that share the degeneration of the cerebellum and its connections as their main feature. We performed a detailed description of the natural history of the main SCAs, focusing on epidemiology, progression, haplotype analysis and its correlation with founder effect, and perspective of future treatments. References for this review were identified by an in-depth literature search on PubMed and selected on the basis of relevance to the topic and on the authors' judgment. More than 40 SCAs have been described so far. SCA3 is the most common subtype worldwide, followed by SCA2 and 6. To evaluate the natural history and to estimate the progression of the main SCAs, consortiums were created all over the globe. Clinical rating scales have been developed to provide an accurate estimation of cerebellar clinical deficits, evaluating cerebellar and non-cerebellar signs. Natural history studies revealed that SCA1 patients' functional status worsened significantly faster than in other SCA subtypes, followed by SCA3, SCA2, SCA6, and SCA10. Number of CAG repeats, age of onset, and ataxia severity at baseline are strong contributors to the risk of death in most SCAs. Understanding the natural history of SCAs is extremely important. Although these are rare diseases, the impact they have on the affected individual are enormous. The advances in the field of genetics are helping understand neuronal functions and dysfunctions and allowing the study and development of possible therapies.

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