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A recessive ataxia diagnosis algorithm for the next generation sequencing era.

Authors :
Renaud, Mathilde
Tranchant, Christine
Martin, Juan Vicente Torres
Mochel, Fanny
Synofzik, Matthis
van de Warrenburg, Bart
Pandolfo, Massimo
Koenig, Michel
Kolb, Stefan A.
Anheim, Mathieu
Alonso, Isabel
Azzedine, Hamid
Barbot, Clara
Bereau, Matthieu
Berkovic, Sam
Bernard, Geneviéve
Bindoff, Laurence A.
Bompaire, Flavie
Bonneau, Dominique
Bonneau, Patrizia
Source :
Annals of Neurology; Dec2017, Vol. 82 Issue 6, p892-899, 8p
Publication Year :
2017

Abstract

<bold>Objective: </bold>Differential diagnosis of autosomal recessive cerebellar ataxias can be challenging. A ranking algorithm named RADIAL that predicts the molecular diagnosis based on the clinical phenotype of a patient has been developed to guide genetic testing and to align genetic findings with the clinical context.<bold>Methods: </bold>An algorithm that follows clinical practice, including patient history, clinical, magnetic resonance imaging, electromyography, and biomarker features, was developed following a review of the literature on 67 autosomal recessive cerebellar ataxias and personal clinical experience. Frequency and specificity of each feature were defined for each autosomal recessive cerebellar ataxia, and corresponding prediction scores were assigned. Clinical and paraclinical features of patients are entered into the algorithm, and a patient's total score for each autosomal recessive cerebellar ataxia is calculated, producing a ranking of possible diagnoses. Sensitivity and specificity of the algorithm were assessed by blinded analysis of a multinational cohort of 834 patients with molecularly confirmed autosomal recessive cerebellar ataxia. The performance of the algorithm was assessed versus a blinded panel of autosomal recessive cerebellar ataxia experts.<bold>Results: </bold>The correct diagnosis was ranked within the top 3 highest-scoring diagnoses at a sensitivity and specificity of >90% for 84% and 91% of the evaluated genes, respectively. Mean sensitivity and specificity of the top 3 highest-scoring diagnoses were 92% and 95%, respectively. The algorithm outperformed the panel of ataxia experts (p = 0.001).<bold>Interpretation: </bold>Our algorithm is highly sensitive and specific, accurately predicting the underlying molecular diagnoses of autosomal recessive cerebellar ataxias, thereby guiding targeted sequencing or facilitating interpretation of next-generation sequencing data. Ann Neurol 2017;82:892-899. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
03645134
Volume :
82
Issue :
6
Database :
Complementary Index
Journal :
Annals of Neurology
Publication Type :
Academic Journal
Accession number :
126886206
Full Text :
https://doi.org/10.1002/ana.25084