揭示肺癌评估的PET/CT扫描中的脑区域模式:一个计算AI框架

Hakan Sat Bozcuk, Ahmet Eren Sen, Mehmet Artac, Bugra Kaya
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引用次数: 0

摘要

本研究旨在利用计算机视觉人工智能(AI)模型,研究肺癌患者和健康对照者在诊断时大脑活动的潜在差异。接受肺癌评估(病例)和良性肺结节(对照组)的参与者接受了正电子发射断层扫描/计算机断层扫描(PET/CT)。专门的软件重建并标记了大脑图像。通过迁移学习,并辅以多元判别分析,利用EfficientNet B0开发了计算机视觉人工智能模型。研究共招募了84例患者。构建的人工智能模型在一部分病例(52例肺癌患者,22例对照组)上表现出鲁棒性的准确性(内部精度=1.0,外部灵敏度=0.83)。值得注意的是,右额叶是一个关键的鉴别器,显示肺癌病例中额叶与脑干活动的比例降低了5% (Wilk’s Lambda=0.877, P=0.002)。我们的AI模型仅基于PET/CT脑成像数据,对肺癌患者进行了准确的分类。在这项研究中,右额叶的独特作用强调了更广泛的意义,揭示了肺癌诊断中的脑功能差异。
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Unveiling Brain Region Patterns in PET/CT scans for Lung Cancer Assessment: A Computational AI Framework
This study aims to investigate potential differences in brain activity between lung cancer patients and healthy controls at the time of diagnosis, utilizing a computer vision artificial intelligence (AI) model. Participants undergoing evaluation for lung cancer (cases) and with benign pulmonary nodules (controls) underwent Positron Emission Tomography/ Computerized Tomography (PET/CT) scans. Specialized software reconstructed and labeled brain images. A computer vision AI model was developed using EfficientNet B0 through transfer learning, complemented by multivariate discriminant analysis. A total of 84 cases were recruited into the study. The constructed AI model exhibited robust accuracy (internal accuracy=1.0, external sensitivity=0.83) on a subset of cases (52 lung cancer patients, 22 controls). Notably, the right frontal lobe emerged as a crucial discriminator, displaying a 5% reduction in the ratio of frontal lobe to brainstem activity in lung cancer cases (Wilk’s Lambda=0.877, P=0.002). Based solely on PET/CT brain imaging data, our AI model accurately classified lung cancer patients. The distinct role of the right frontal lobe in this study underscores the broader significance, shedding light on brain function disparities at lung cancer diagnosis.
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