Ahmed Alhassan Ali, Abouzid Mohamed, Kaczmarek Elżbieta
Department of Bioinformatics and Computational Biology, Poznan University of Medical Sciences, 60-812 Poznan, Poland.
Doctoral School, Poznan University of Medical Sciences, 60-812 Poznan, Poland.
Cancers (Basel). 2022 Oct 26;14(21):5264. doi: 10.3390/cancers14215264.
The revolution of artificial intelligence and its impacts on our daily life has led to tremendous interest in the field and its related subtypes: machine learning and deep learning. Scientists and developers have designed machine learning- and deep learning-based algorithms to perform various tasks related to tumor pathologies, such as tumor detection, classification, grading with variant stages, diagnostic forecasting, recognition of pathological attributes, pathogenesis, and genomic mutations. Pathologists are interested in artificial intelligence to improve the diagnosis precision impartiality and to minimize the workload combined with the time consumed, which affects the accuracy of the decision taken. Regrettably, there are already certain obstacles to overcome connected to artificial intelligence deployments, such as the applicability and validation of algorithms and computational technologies, in addition to the ability to train pathologists and doctors to use these machines and their willingness to accept the results. This review paper provides a survey of how machine learning and deep learning methods could be implemented into health care providers' routine tasks and the obstacles and opportunities for artificial intelligence application in tumor morphology.
人工智能的变革及其对我们日常生活的影响引发了人们对该领域及其相关子类型(机器学习和深度学习)的极大兴趣。科学家和开发者设计了基于机器学习和深度学习的算法来执行各种与肿瘤病理学相关的任务,如肿瘤检测、分类、不同阶段的分级、诊断预测、病理特征识别、发病机制以及基因组突变。病理学家对人工智能感兴趣,希望提高诊断的准确性和公正性,并减少工作量以及所耗费的时间,因为这会影响所做决策的准确性。遗憾的是,在人工智能部署方面已经存在一些需要克服的障碍,比如算法和计算技术的适用性和验证,此外还有培训病理学家和医生使用这些机器的能力以及他们接受结果的意愿。这篇综述文章概述了机器学习和深度学习方法如何能够应用于医疗保健提供者的日常任务,以及人工智能在肿瘤形态学应用中的障碍和机遇。