机器学习在医学和医疗保健中的应用综述

Preeti Singh, S. Singh, D. Singh
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引用次数: 10

摘要

通过应用分类模型和系统,机器学习技术可以广泛应用于医学领域问题的解决,这些模型和系统可以支持医务人员诊断和预测诊断疾病。但是,很难从医疗记录和数据中提取知识和信息,因为这些数据和信息是混合的、无组织的和高维的。该数据还包含采集数据中的噪声,采集数据中存在异常值。主要适用的方法将通过检查不同的机器学习技术来使用。通过准确性验证和验证机器学习技术的性能来检查机器学习技术的性能。目前的研究论文主要讨论了不同的机器学习技术,即决策树算法、支持向量机方法、随机森林方法、基于进化算法的模型和基于群体智能的技术在疾病诊断和治疗中的可用性和适用性。先进的医学诊断标准通过使用想象技术在疾病诊断中产生诊断的信心,被医生广泛使用。鉴于医学图像分析是一项非常复杂和困难的任务,利用机器学习方法对图像进行分析将为疾病诊断提供支持和重大帮助。不同机器学习方法的应用是通过将其技术应用于大数据进行解释诊断,因为机器学习方法显示了其能力,并显示了其易于解决生物信息学领域的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AN INTRODUCTION AND REVIEW ON MACHINE LEARNING APPLICATIONS IN MEDICINE AND HEALTHCARE
Machine learning techniques can extensively apply in the solution of the medicine domain problems by applying classification models and systems that can support medical personnel in the diagnosis and predication of diagnosis diseases. Though, it's hard to extract knowledge and information from medical records and data because this data and information is in mixed, unorganized, and high dimensional. This data also contains noise in collected data and outliers exist in collected data. Main applicable method will be used applies by checking different machine learning techniques. The performance of machine learning technique is checked by verifying and validating machine learning techniques' performances through accuracy. Present research paper has been discussing about the usability and applicability of different machine learning techniques i.e. decision tree algorithm, support vector machine method, random forest method, evolutionary algorithms based models and swarm intelligence based techniques in the diagnosis and treatment of the diseases. Advance medical diagnosis criteria generates confidence in diagnosis by using imagining techniques in the diagnosis of a disease is extensively used by doctors. In view of the fact that analyzing medical images is very complex and difficult task, by using machine learning methods for analysis of imaging will support and give major help in disease diagnosis. Application of different Machine learning methods is used by applying its techniques on big data for interpretation for diagnosis because machine learning methods show their capability and shows their easiness to solve the problems of bioinformatics domain.
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