Department of Surgery and Cancer, Imperial College London, London, United Kingdom.
Hamlyn Centre, Imperial College London, London, United Kingdom.
JAMA Surg. 2022 Nov 1;157(11):e223899. doi: 10.1001/jamasurg.2022.3899. Epub 2022 Nov 9.
Cancers of the upper gastrointestinal tract remain a major contributor to the global cancer burden. The accurate mapping of tumor margins is of particular importance for curative cancer resection and improvement in overall survival. Current mapping techniques preclude a full resection margin assessment in real time.
To evaluate whether diffuse reflectance spectroscopy (DRS) on gastric and esophageal cancer specimens can differentiate tissue types and provide real-time feedback to the operator.
DESIGN, SETTING, AND PARTICIPANTS: This was a prospective ex vivo validation study. Patients undergoing esophageal or gastric cancer resection were prospectively recruited into the study between July 2020 and July 2021 at Hammersmith Hospital in London, United Kingdom. Tissue specimens were included for patients undergoing elective surgery for either esophageal carcinoma (adenocarcinoma or squamous cell carcinoma) or gastric adenocarcinoma.
A handheld DRS probe and tracking system was used on freshly resected ex vivo tissue to obtain spectral data. Binary classification, following histopathological validation, was performed using 4 supervised machine learning classifiers.
Data were divided into training and testing sets using a stratified 5-fold cross-validation method. Machine learning classifiers were evaluated in terms of sensitivity, specificity, overall accuracy, and the area under the curve.
Of 34 included patients, 22 (65%) were male, and the median (range) age was 68 (35-89) years. A total of 14 097 mean spectra for normal and cancerous tissue were collected. For normal vs cancer tissue, the machine learning classifier achieved a mean (SD) overall diagnostic accuracy of 93.86% (0.66) for stomach tissue and 96.22% (0.50) for esophageal tissue and achieved a mean (SD) sensitivity and specificity of 91.31% (1.5) and 95.13% (0.8), respectively, for stomach tissue and of 94.60% (0.9) and 97.28% (0.6) for esophagus tissue. Real-time tissue tracking and classification was achieved and presented live on screen.
This study provides ex vivo validation of the DRS technology for real-time differentiation of gastric and esophageal cancer from healthy tissue using machine learning with high accuracy. As such, it is a step toward the development of a real-time in vivo tumor mapping tool for esophageal and gastric cancers that can aid decision-making of resection margins intraoperatively.
上消化道癌症仍然是全球癌症负担的主要原因。准确绘制肿瘤边缘对于癌症的根治性切除和整体生存率的提高尤为重要。目前的绘图技术无法实时进行全面的切除边缘评估。
评估胃和食管癌标本上的漫反射光谱(DRS)是否可以区分组织类型并实时向操作人员提供反馈。
设计、设置和参与者:这是一项前瞻性的离体验证研究。2020 年 7 月至 2021 年 7 月,英国伦敦哈默史密斯医院前瞻性地招募了接受食管或胃癌切除术的患者入组本研究。组织标本包括因腺癌(腺癌或鳞状细胞癌)或胃腺癌而接受择期手术的患者。
使用手持式 DRS 探头和跟踪系统对新切除的离体组织进行检测,以获得光谱数据。在经过组织病理学验证后,使用 4 种监督机器学习分类器进行二进制分类。
使用分层 5 折交叉验证方法将数据分为训练集和测试集。根据敏感性、特异性、总体准确性和曲线下面积来评估机器学习分类器。
34 例入组患者中,22 例(65%)为男性,中位(范围)年龄为 68(35-89)岁。共采集了 14097 个正常和癌组织的平均光谱。对于正常组织与癌组织,用于胃组织的机器学习分类器的总体诊断准确性的平均值(标准差)为 93.86%(0.66),用于食管组织的为 96.22%(0.50),胃组织的平均(标准差)敏感性和特异性分别为 91.31%(1.5)和 95.13%(0.8),食管组织的为 94.60%(0.9)和 97.28%(0.6)。实时组织跟踪和分类得以实现,并实时显示在屏幕上。
本研究使用机器学习对胃和食管癌与健康组织进行实时区分,提供了 DRS 技术的离体验证,具有很高的准确性。因此,这是开发一种用于食管和胃癌的实时体内肿瘤绘图工具的重要一步,该工具可以帮助术中决定切除边缘。