Collins Toby, Maktabi Marianne, Barberio Manuel, Bencteux Valentin, Jansen-Winkeln Boris, Chalopin Claire, Marescaux Jacques, Hostettler Alexandre, Diana Michele, Gockel Ines
Institute for Research against Digestive Cancer (IRCAD), 67091 Strasbourg, France.
Innovation Center Computer-Assisted Surgery (ICCAS), University of Leipzig, 04103 Leipzig, Germany.
Diagnostics (Basel). 2021 Sep 30;11(10):1810. doi: 10.3390/diagnostics11101810.
There are approximately 1.8 million diagnoses of colorectal cancer, 1 million diagnoses of stomach cancer, and 0.6 million diagnoses of esophageal cancer each year globally. An automatic computer-assisted diagnostic (CAD) tool to rapidly detect colorectal and esophagogastric cancer tissue in optical images would be hugely valuable to a surgeon during an intervention. Based on a colon dataset with 12 patients and an esophagogastric dataset of 10 patients, several state-of-the-art machine learning methods have been trained to detect cancer tissue using hyperspectral imaging (HSI), including Support Vector Machines (SVM) with radial basis function kernels, Multi-Layer Perceptrons (MLP) and 3D Convolutional Neural Networks (3DCNN). A leave-one-patient-out cross-validation (LOPOCV) with and without combining these sets was performed. The ROC-AUC score of the 3DCNN was slightly higher than the MLP and SVM with a difference of 0.04 AUC. The best performance was achieved with the 3DCNN for colon cancer and esophagogastric cancer detection with a high ROC-AUC of 0.93. The 3DCNN also achieved the best DICE scores of 0.49 and 0.41 on the colon and esophagogastric datasets, respectively. These scores were significantly improved using a patient-specific decision threshold to 0.58 and 0.51, respectively. This indicates that, in practical use, an HSI-based CAD system using an interactive decision threshold is likely to be valuable. Experiments were also performed to measure the benefits of combining the colorectal and esophagogastric datasets (22 patients), and this yielded significantly better results with the MLP and SVM models.
全球每年约有180万例结直肠癌诊断病例、100万例胃癌诊断病例和60万例食管癌诊断病例。一种能够在光学图像中快速检测结直肠癌和食管胃癌组织的自动计算机辅助诊断(CAD)工具,对于外科医生在手术过程中具有巨大价值。基于一个包含12名患者的结肠数据集和一个包含10名患者的食管胃数据集,已经训练了几种先进的机器学习方法,使用高光谱成像(HSI)来检测癌症组织,包括具有径向基函数核的支持向量机(SVM)、多层感知器(MLP)和3D卷积神经网络(3DCNN)。进行了留一患者交叉验证(LOPOCV),分别对这些数据集进行了合并和未合并的验证。3DCNN的ROC-AUC得分略高于MLP和SVM,AUC差异为0.04。在结肠癌和食管胃癌检测中,3DCNN表现最佳,ROC-AUC高达0.93。3DCNN在结肠和食管胃数据集上的DICE得分也分别达到了最佳的0.49和0.41。使用患者特异性决策阈值后,这些得分分别显著提高到了0.58和0.51。这表明,在实际应用中,基于HSI的CAD系统使用交互式决策阈值可能具有重要价值。还进行了实验来衡量合并结直肠和食管胃数据集(22名患者)的益处,结果显示MLP和SVM模型的效果显著更好。