2020
DOI: 10.1002/mds.28311
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Prediction of the Age at Onset of Spinocerebellar Ataxia Type 3 with Machine Learning

Abstract: Background In polyglutamine (polyQ) disease, the investigation of the prediction of a patient's age at onset (AAO) facilitates the development of disease‐modifying intervention and underpins the delay of disease onset and progression. Few polyQ disease studies have evaluated AAO predicted by machine‐learning algorithms and linear regression methods. Objective The objective of this study was to develop a machine‐learning model for AAO prediction in the largest spinocerebellar ataxia type 3/Machado–Joseph diseas… Show more

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Cited by 10 publications
(22 citation statements)
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References 37 publications
(81 reference statements)
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“…44 Peng et al used several ML methods and linear regression to predict the age of onset of polyglutamine disease among 1054 Chinese participants, observed that the XGBoost algorithm showed favorable prediction performance than random forest, support vector regression, elastic network, and linear regression. 45 Several previous studies also applied deep learning techniques to develop the BAI and achieved considerable efficacy. 6,14 However, it is reported that deep learning techniques usually have superior performance in dealing with high-dimensional, unstructured, and complex structure data, while XGBoost is more suitable for low-dimensional data.…”
Section: Discussionmentioning
confidence: 99%
“…44 Peng et al used several ML methods and linear regression to predict the age of onset of polyglutamine disease among 1054 Chinese participants, observed that the XGBoost algorithm showed favorable prediction performance than random forest, support vector regression, elastic network, and linear regression. 45 Several previous studies also applied deep learning techniques to develop the BAI and achieved considerable efficacy. 6,14 However, it is reported that deep learning techniques usually have superior performance in dealing with high-dimensional, unstructured, and complex structure data, while XGBoost is more suitable for low-dimensional data.…”
Section: Discussionmentioning
confidence: 99%
“…As an efficient algorithm of machine learning, XGBoost has been widely applied to predict the onset of disease ( 60 , 61 ). The predictive testing process of the XGBoost model is conducive to the assessment of expecting the onset of disease, and it helps to optimize medical measurements ( 62 ). Therefore, we combined LEfSe analysis and the XGBoost algorithm to effectively process the large-scale microbial data to achieve the identification of SA.…”
Section: Discussionmentioning
confidence: 99%
“…Extreme Gradient Boosting (XGBoost) is an efficient algorithm used for machine learning ( Taylor et al., 2018 ; Ye et al., 2018 ) that has been widely applied to predict the onset of disease and even for providing genetic counseling for individuals. The predictive testing process employed by the XGBoost model is beneficial for evaluating the expecting onset, which is helpful for optimizing future medical plans ( Peng et al., 2021 ). Therefore, we integrated LEfSe analysis and the XGBoost algorithm to efficiently process large-scale microbiological data, with the aim of predicting TP.…”
Section: Discussionmentioning
confidence: 99%