人工智能在肝细胞癌诊治中的作用

Rajesh Kumar Mokhria, Jasbir Singh
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引用次数: 0

摘要

人工智能(AI)是多年前发展起来的,但近年来由于其在医疗领域的应用而取得了很大进展。人工智能及其不同的分支,即深度学习和机器学习,除了克服与人类评估相关的局限性外,还可以检查大量数据,并在决策中发挥重要作用。深度学习试图模仿人类大脑的功能。它使用更多的数据和复杂的算法。机器学习是基于自动学习的人工智能。它利用早期给定的数据,并使用算法来排列和识别模型。在全球范围内,肝细胞癌是疾病和死亡的主要原因。尽管肝细胞癌的整体治疗策略取得了实质性进展,但管理仍是一个主要问题。人工智能在胃肠病学领域,特别是在肝病学领域,对肝细胞癌的各种调查特别有用,因为它是一种常见的肿瘤,并且具有特定的放射学特征,无需组织学研究即可进行诊断。然而,由于整个疾病过程中图像的变化,解释和分析所得到的图像并不总是容易的。此外,预后过程和对治疗过程的反应可能受到许多因素的影响。目前,人工智能被用于诊断、治疗和预测目标。未来的调查对于防止可能的偏见至关重要,因为偏见可能随后影响图像分析,从而限制在医疗实践中对此类模型的同意和使用。此外,需要专家认识到这些方法的真正效用,以及它们的相关效力和限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Role of artificial intelligence in the diagnosis and treatment of hepatocellular carcinoma
Artificial intelligence (AI) evolved many years ago, but it gained much advance-ment in recent years for its use in the medical domain. AI with its different subsidiaries, i.e. deep learning and machine learning, examine a large amount of data and performs an essential part in decision-making in addition to conquering the limitations related to human evaluation. Deep learning tries to imitate the functioning of the human brain. It utilizes much more data and intricate algorithms. Machine learning is AI based on automated learning. It utilizes earlier given data and uses algorithms to arrange and identify models. Globally, hepatocellular carcinoma is a major cause of illness and fatality. Although with substantial progress in the whole treatment strategy for hepatocellular carcinoma, managing it is still a major issue. AI in the area of gastroenterology, especially in hepatology, is particularly useful for various investigations of hepatocellular carcinoma because it is a commonly found tumor, and has specific radiological features that enable diagnostic procedures without the requirement of the histological study. However, interpreting and analyzing the resulting images is not always easy due to change of images throughout the disease process. Further, the prognostic process and response to the treatment process could be influenced by numerous components. Currently, AI is utilized in order to diagnose, curative and prediction goals. Future investigations are essential to prevent likely bias, which might subsequently influence the analysis of images and therefore restrict the consent and utilization of such models in medical practices. Moreover, experts are required to realize the real utility of such approaches, along with their associated potencies and constraints.
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