Huang Qin, Lv Wenqi, Zhou Zhanping, Tan Shuting, Lin Xue, Bo Zihao, Fu Rongxin, Jin Xiangyu, Guo Yuchen, Wang Hongwu, Xu Feng, Huang Guoliang
Department of Biomedical Engineering, School of Medicine, Tsinghua University, Beijing 100084, China.
BNRist and School of Software, Tsinghua University, Beijing 100084, China.
Diagnostics (Basel). 2023 Feb 9;13(4):648. doi: 10.3390/diagnostics13040648.
Lung cancer remains the most commonly diagnosed cancer and the leading cause of death from cancer. Recent research shows that the human eye can provide useful information about one's health status, but few studies have revealed that the eye's features are associated with the risk of cancer. The aims of this paper are to explore the association between scleral features and lung neoplasms and develop a non-invasive artificial intelligence (AI) method for detecting lung neoplasms based on scleral images. A novel instrument was specially developed to take the reflection-free scleral images. Then, various algorithms and different strategies were applied to find the most effective deep learning algorithm. Ultimately, the detection method based on scleral images and the multi-instance learning (MIL) model was developed to predict benign or malignant lung neoplasms. From March 2017 to January 2019, 3923 subjects were recruited for the experiment. Using the pathological diagnosis of bronchoscopy as the gold standard, 95 participants were enrolled to take scleral image screens, and 950 scleral images were fed to AI analysis. Our non-invasive AI method had an AUC of 0.897 ± 0.041(95% CI), a sensitivity of 0.836 ± 0.048 (95% CI), and a specificity of 0.828 ± 0.095 (95% CI) for distinguishing between benign and malignant lung nodules. This study suggested that scleral features such as blood vessels may be associated with lung cancer, and the non-invasive AI method based on scleral images can assist in lung neoplasm detection. This technique may hold promise for evaluating the risk of lung cancer in an asymptomatic population in areas with a shortage of medical resources and as a cost-effective adjunctive tool for LDCT screening at hospitals.
肺癌仍然是最常被诊断出的癌症,也是癌症死亡的主要原因。最近的研究表明,人眼可以提供有关一个人健康状况的有用信息,但很少有研究揭示眼睛的特征与癌症风险有关。本文的目的是探讨巩膜特征与肺部肿瘤之间的关联,并开发一种基于巩膜图像检测肺部肿瘤的非侵入性人工智能(AI)方法。专门开发了一种新型仪器来获取无反射的巩膜图像。然后,应用各种算法和不同策略来找到最有效的深度学习算法。最终,开发了基于巩膜图像和多实例学习(MIL)模型的检测方法来预测良性或恶性肺部肿瘤。从2017年3月至2019年1月,招募了3923名受试者进行实验。以支气管镜病理诊断为金标准,纳入95名参与者进行巩膜图像筛查,并将950张巩膜图像输入AI分析。我们的非侵入性AI方法在区分良性和恶性肺结节方面的曲线下面积(AUC)为0.897±0.041(95%置信区间),灵敏度为0.836±0.048(95%置信区间),特异性为0.828±0.095(95%置信区间)。这项研究表明,诸如血管等巩膜特征可能与肺癌有关,基于巩膜图像的非侵入性AI方法可以辅助肺部肿瘤检测。这项技术可能有望在医疗资源短缺地区的无症状人群中评估肺癌风险,并作为医院低剂量CT筛查的一种经济有效的辅助工具。