医疗保健中用于改进诊断和预后的机器学习

Niharika G. Maity, Sreerupa Das
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引用次数: 57

摘要

在过去十年中,由于更便宜的计算能力和廉价的内存,机器学习获得了巨大的兴趣,这使得它能够有效地存储、处理和分析不断增长的数据量。增强的算法正在被设计和应用于大型数据集,以帮助发现隐藏的洞察力和数据元素之间不明显的相关性。这些见解有助于企业做出更好的决策并优化关键指标。机器学习的日益普及也源于这样一个事实,即学习算法与应用领域无关。例如,分类算法可以用于对风车叶片的故障进行分类,也可以用于对调查中的电视观众进行分类。然而,机器学习的实际价值取决于适应和应用这些算法来解决特定现实世界问题的能力。在本文中,我们讨论了两种用于解释医学数据以进行自动分析的应用。我们的第一个案例研究展示了贝叶斯推理(机器学习的一种范例)在基于认知测试结果和人口统计数据的基础上诊断阿尔茨海默病的使用。在第二个案例研究中,我们专注于使用人工神经网络对细胞图像进行自动分类,以确定乳腺癌的进展和严重程度。虽然这些研究仍处于初步阶段,但它们证明了机器学习技术在提供快速、高效和自动化数据分析方面的价值。机器学习为疾病的早期诊断带来了希望,帮助患者在治疗方案上做出明智的决定,并有助于提高他们的整体生活质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning for improved diagnosis and prognosis in healthcare
Machine learning has gained tremendous interest in the last decade fueled by cheaper computing power and inexpensive memory — making it efficient to store, process and analyze growing volumes of data. Enhanced algorithms are being designed and applied on large datasets to help discover hidden insights and correlations amongst data elements not obvious to human. These insights help businesses take better decisions and optimize key indicators of interest. The growing popularity of machine learning also stems from the fact that learning algorithms are agnostic to the domain of application. Classification algorithms, for example, that could be applied to categorize faults in windmill blades can also be used for categorizing TV viewers in a survey. The actual value of machine learning however depends on the ability to adapt and apply these algorithms to solve specific real world problems. In this paper we discuss two such applications for interpreting medical data for automated analysis. Our first case study demonstrates the use of Bayesian Inference, a paradigm of machine learning, for diagnosing Alzheimer's disease based on cognitive test results and demographic data. In the second case study we focus on automated classification of cell images to determine the advancement and severity of breast cancer using artificial neural networks. Although these research are still preliminary, they demonstrate the value of machine learning techniques in providing quick, efficient and automated data analysis. Machine learning offers hope with early diagnosis of diseases, help patients in making informed decisions on treatment options and can help in improving overall quality of their lives.
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