Deep learning for prediction of amyotrophic lateral sclerosis using stacked auto encoders

Sindhu P. Menon
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引用次数: 1

Abstract

: Healthcare is an emerging area in big data. Raw data contains lot of noise in it, hence cannot produce good results when processed. There is a need to improve the quality of data. This study shows how the prediction accuracy can be improved if the quality of data is improved. Previous work on issues related to variety and veracity have already been cited. Here the issues related to prediction are addressed. The dataset contains 1,047,253 records of patients having amyotrophic lateral sclerosis (ALS). Missing data values are filled and later used for prediction. Predicting the progression of the disease was calculated using stacked auto encoders. The results were compared with traditional techniques like random forest and support vector machine. A similar study was conducted using random forests and the accuracy obtained was only 66%. This paper presents a study on how to predict the progression of ALS using deep learning and an accuracy of 88% was achieved which is far more than the accuracy obtained on raw data. The study thus demonstrates the fact that accuracy increases with better data.
使用堆叠自动编码器的肌萎缩侧索硬化症预测的深度学习
医疗保健是大数据的新兴领域。原始数据中含有大量的噪声,处理后不能得到很好的结果。有必要提高数据的质量。研究表明,提高数据质量可以提高预测精度。之前关于多样性和准确性问题的研究已经被引用。这里讨论与预测有关的问题。该数据集包含1,047,253例肌萎缩侧索硬化症(ALS)患者的记录。缺失的数据值将被填充,然后用于预测。预测疾病的进展使用堆叠自编码器计算。结果与随机森林和支持向量机等传统方法进行了比较。使用随机森林进行了类似的研究,准确度仅为66%。本文介绍了一项关于如何使用深度学习预测ALS进展的研究,准确度达到88%,远远超过原始数据获得的准确度。因此,该研究证明了这样一个事实,即数据越好,准确性越高。
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