Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:2659-2662. doi: 10.1109/EMBC48229.2022.9871911.
Artificial Intelligence-based tools have shown promising results to help clinicians in diagnosis tasks. Radio-genomics would aid in the genotype characterization using information from radiologic images. The prediction of the mutations status of main oncogenes associated with lung cancer will help the clinicians to have a more accurate diagnosis and a personalized treatment plan, decreasing the need to use the biopsy. In this work, novel and objective features were extracted from the lung that contained the nodule, and several machine learning methods were combined with feature selection techniques to select the best approach to predict the EGFR mutation status in lung cancer CT images. An AUC of 0.756 ± 0.055 was obtained using a logistic regression and independent component analysis as feature selector, supporting the hypothesis that CT images can capture pathophysiological information with great value for clinical assessment and personalized medicine of lung cancer. Clinical Relevance - Radiogenomic approaches could be an interesting help for lung cancer characterization. This work represents a preliminary study for the development of computer-aided decision systems to provide a more accurate and fast characterization of lung cancer which is fundamental for an adequate treatment plan for lung cancer patients.
基于人工智能的工具已经显示出有希望的结果,可以帮助临床医生进行诊断任务。放射基因组学将有助于利用放射图像信息进行基因型特征描述。主要与肺癌相关的基因突变状态的预测将帮助临床医生进行更准确的诊断和个性化的治疗计划,减少使用活检的需求。在这项工作中,从含有结节的肺部提取了新颖和客观的特征,并结合了几种机器学习方法和特征选择技术,以选择预测肺癌 CT 图像中 EGFR 突变状态的最佳方法。使用逻辑回归和独立成分分析作为特征选择器,获得了 0.756 ± 0.055 的 AUC,支持了 CT 图像可以捕获具有重要临床评估和肺癌个性化医疗价值的病理生理信息的假设。临床意义-放射基因组学方法可能是肺癌特征描述的一个有趣的辅助手段。这项工作代表了开发计算机辅助决策系统的初步研究,该系统可以更准确、快速地对肺癌进行特征描述,这对于肺癌患者的适当治疗计划至关重要。