Prisciandaro Elena, Sedda Giulia, Cara Andrea, Diotti Cristina, Spaggiari Lorenzo, Bertolaccini Luca
Department of Thoracic Surgery, IEO, European Institute of Oncology IRCCS, 20141 Milan, Italy.
Department of Oncology and Hemato-Oncology, University of Milan, 20122 Milan, Italy.
J Clin Med. 2023 Jan 22;12(3):880. doi: 10.3390/jcm12030880.
Artificial neural networks are statistical methods that mimic complex neural connections, simulating the learning dynamics of the human brain. They play a fundamental role in clinical decision-making, although their success depends on good integration with clinical protocols. When applied to lung cancer research, artificial neural networks do not aim to be biologically realistic, but rather to provide efficient models for nonlinear regression or classification.
We conducted a comprehensive search of EMBASE (via Ovid), MEDLINE (via PubMed), Cochrane CENTRAL, and Google Scholar from April 2018 to December 2022, using a combination of keywords and related terms for "artificial neural network", "lung cancer", "non-small cell lung cancer", "diagnosis", and "treatment".
Artificial neural networks have shown excellent aptitude in learning the relationships between the input/output mapping from a given dataset, without any prior information or assumptions about the statistical distribution of the data. They can simultaneously process numerous variables, managing complexity; hence, they have found broad application in tasks requiring attention.
Lung cancer is the most common and lethal form of tumor, with limited diagnostic and treatment methods. The advances in tailored medicine have led to the development of novel tools for diagnosis and treatment. Artificial neural networks can provide valuable support for both basic research and clinical decision-making. Therefore, tight cooperation among surgeons, oncologists, and biostatisticians appears mandatory.
人工神经网络是一种统计方法,可模拟复杂的神经连接,模仿人类大脑的学习动态。它们在临床决策中发挥着重要作用,尽管其成功与否取决于与临床方案的良好整合。当应用于肺癌研究时,人工神经网络并非旨在追求生物学上的真实性,而是为非线性回归或分类提供高效模型。
我们于2018年4月至2022年12月对EMBASE(通过Ovid)、MEDLINE(通过PubMed)、Cochrane CENTRAL和谷歌学术进行了全面检索,使用了“人工神经网络”“肺癌”“非小细胞肺癌”“诊断”和“治疗”的关键词及相关术语组合。
人工神经网络在学习给定数据集中输入/输出映射之间的关系方面表现出卓越的能力,无需关于数据统计分布的任何先验信息或假设。它们可以同时处理众多变量,应对复杂性;因此,它们在需要关注的任务中得到了广泛应用。
肺癌是最常见且致命的肿瘤形式,诊断和治疗方法有限。精准医学的进展催生了新型诊断和治疗工具。人工神经网络可为基础研究和临床决策提供有价值的支持。因此,外科医生、肿瘤学家和生物统计学家之间的紧密合作似乎必不可少。