Department of Surgery and Cancer.
Hamlyn Centre for Robotics Surgery, Imperial College London, London, UK.
Int J Surg. 2024 Apr 1;110(4):1983-1991. doi: 10.1097/JS9.0000000000001102.
Colorectal cancer is the third most commonly diagnosed malignancy and the second leading cause of mortality worldwide. A positive resection margin following surgery for colorectal cancer is linked with higher rates of local recurrence and poorer survival. The authors investigated diffuse reflectance spectroscopy (DRS) to distinguish tumour and non-tumour tissue in ex-vivo colorectal specimens, to aid margin assessment and provide augmented visual maps to the surgeon in real-time.
Patients undergoing elective colorectal cancer resection surgery at a London-based hospital were prospectively recruited. A hand-held DRS probe was used on the surface of freshly resected ex-vivo colorectal tissue. Spectral data were acquired for tumour and non-tumour tissue. Binary classification was achieved using conventional machine learning classifiers and a convolutional neural network (CNN), which were evaluated in terms of sensitivity, specificity, accuracy and the area under the curve.
A total of 7692 mean spectra were obtained for tumour and non-tumour colorectal tissue. The CNN-based classifier was the best performing machine learning algorithm, when compared to contrastive approaches, for differentiating tumour and non-tumour colorectal tissue, with an overall diagnostic accuracy of 90.8% and area under the curve of 96.8%. Live on-screen classification of tissue type was achieved using a graduated colourmap.
A high diagnostic accuracy for a DRS probe and tracking system to differentiate ex-vivo tumour and non-tumour colorectal tissue in real-time with on-screen visual feedback was highlighted by this study. Further in-vivo studies are needed to ensure integration into a surgical workflow.
结直肠癌是全球第三大常见恶性肿瘤,也是全球第二大主要致死原因。结直肠癌手术后的阳性切缘与更高的局部复发率和更差的生存率相关。作者研究了漫反射光谱(DRS),以区分肿瘤和非肿瘤组织的离体结直肠标本,以帮助评估边缘,并为外科医生实时提供增强的可视化地图。
在伦敦的一家医院接受择期结直肠癌切除术的患者被前瞻性招募。手持式 DRS 探头用于对新鲜切除的离体结直肠组织表面进行检测。对肿瘤和非肿瘤组织进行光谱数据采集。使用传统机器学习分类器和卷积神经网络(CNN)进行二进制分类,并评估其敏感性、特异性、准确性和曲线下面积。
共获得 7692 个肿瘤和非肿瘤结直肠组织的平均光谱。与对比方法相比,基于 CNN 的分类器是区分肿瘤和非肿瘤结直肠组织的最佳机器学习算法,总体诊断准确性为 90.8%,曲线下面积为 96.8%。使用分级色图实现了组织类型的实时屏幕分类。
本研究强调了一种 DRS 探头和跟踪系统具有较高的诊断准确性,可实时区分离体肿瘤和非肿瘤结直肠组织,并具有屏幕上的视觉反馈。需要进一步的体内研究来确保其整合到手术流程中。