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机器学习工具在医疗保健决策中的应用。

Involvement of Machine Learning Tools in Healthcare Decision Making.

机构信息

Faculty of Information Technology, University of Moratuwa, Katubedda, Moratuwa, Sri Lanka.

出版信息

J Healthc Eng. 2021 Jan 27;2021:6679512. doi: 10.1155/2021/6679512. eCollection 2021.

Abstract

In the present day, there are many diseases which need to be identified at their early stages to start relevant treatments. If not, they could be uncurable and deadly. Due to this reason, there is a need of analysing complex medical data, medical reports, and medical images at a lesser time but with greater accuracy. There are even some instances where certain abnormalities cannot be directly recognized by humans. In healthcare for computational decision making, machine learning approaches are being used in these types of situations where a crucial data analysis needs to be performed on medical data to reveal hidden relationships or abnormalities which are not visible to humans. Implementing algorithms to perform such tasks itself is difficult, but what makes it even more challenging is to increase the accuracy of the algorithm while decreasing the required time for the algorithm to execute. In the early days, processing of large amount of medical data was an important task which resulted in machine learning being adapted in the biological domain. Since this happened, the biology and biomedical fields have been reaching higher levels by exploring more knowledge and identifying relationships which were never observed before. Reaching to its peak now the concern is being diverted towards treating patients not only based on the type of disease but also their genetics, which is known as precision medicine. Modifications in machine learning algorithms are being performed and tested daily to improve the performance of the algorithms in analysing and presenting more accurate information. In the healthcare field, starting from information extraction from medical documents until the prediction or diagnosis of a disease, machine learning has been involved. Medical imaging is a section that was greatly improved with the integration of machine learning algorithms to the field of computational biology. Nowadays, many disease diagnoses are being performed by medical image processing using machine learning algorithms. In addition, patient care, resource allocation, and research on treatments for various diseases are also being performed using machine learning-based computational decision making. Throughout this paper, various machine learning algorithms and approaches that are being used for decision making in the healthcare sector will be discussed along with the involvement of machine learning in healthcare applications in the current context. With the explored knowledge, it was evident that neural network-based deep learning methods have performed extremely well in the field of computational biology with the support of the high processing power of modern sophisticated computers and are being extensively applied because of their high predicting accuracy and reliability. When giving concern towards the big picture by combining the observations, it is noticeable that computational biology and biomedicine-based decision making in healthcare have now become dependent on machine learning algorithms, and thus they cannot be separated from the field of artificial intelligence.

摘要

在当今时代,有许多疾病需要在早期阶段进行识别,以便开始进行相关治疗。否则,这些疾病可能无法治愈,甚至致命。由于这个原因,需要在更短的时间内但更准确地分析复杂的医疗数据、医疗报告和医学图像。在某些情况下,某些异常甚至无法直接被人类识别。在医疗保健中的计算决策中,机器学习方法被用于这些情况下,需要对医疗数据进行关键数据分析,以揭示隐藏的关系或异常,这些关系或异常对人类来说是不可见的。实现执行此类任务的算法本身就很困难,但更具挑战性的是,在减少算法执行时间的同时,提高算法的准确性。在早期,处理大量医疗数据是一项重要任务,这导致机器学习在生物领域得到应用。自那时以来,生物学和生物医学领域通过探索更多的知识和识别以前从未观察到的关系,已经达到了更高的水平。现在,关注的焦点已经转向不仅根据疾病类型而且根据患者的遗传因素来治疗患者,这被称为精准医疗。正在对机器学习算法进行日常修改和测试,以提高算法在分析和提供更准确信息方面的性能。在医疗保健领域,从从医疗文档中提取信息到疾病的预测或诊断,机器学习都已被涉及。医学成像与机器学习算法的结合极大地改善了该领域的计算生物学。如今,许多疾病诊断都是通过使用机器学习算法的医学图像处理来进行的。此外,还使用基于机器学习的计算决策来进行患者护理、资源分配和各种疾病的治疗研究。在本文中,将讨论用于医疗保健领域决策的各种机器学习算法和方法,以及机器学习在当前背景下在医疗保健应用中的参与。通过探索的知识,很明显,基于神经网络的深度学习方法在计算生物学领域表现出色,得益于现代复杂计算机的高处理能力,并因其高预测准确性和可靠性而得到广泛应用。当通过结合观察结果关注大局时,可以注意到,基于计算生物学和基于生物医学的医疗保健决策现在已经依赖于机器学习算法,因此它们不能与人工智能领域分离。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a10f/7857908/1f32c2b91f7c/JHE2021-6679512.001.jpg

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