Baeten Ilse G T, Hoogendam Jacob P, Stathonikos Nikolas, Gerestein Cornelis G, Jonges Geertruida N, van Diest Paul J, Zweemer Ronald P
Department of Gynecologic Oncology, Division of Imaging and Oncology, University Medical Center Utrecht, Utrecht University, 3584 CX Utrecht, The Netherlands.
Department of Pathology, University Medical Center Utrecht, Utrecht University, 3584 CX Utrecht, The Netherlands.
Cancers (Basel). 2024 Oct 26;16(21):3619. doi: 10.3390/cancers16213619.
: Pathological ultrastaging, an essential part of sentinel lymph node (SLN) mapping, involves serial sectioning and immunohistochemical (IHC) staining in order to reliably detect clinically relevant metastases. However, ultrastaging is labor-intensive, time-consuming, and costly. Deep learning algorithms offer a potential solution by assisting pathologists in efficiently assessing serial sections for metastases, reducing workload and costs while enhancing accuracy. This proof-of-principle study evaluated the effectiveness of a deep learning algorithm for SLN metastasis detection in early-stage cervical cancer. : We retrospectively analyzed whole slide images (WSIs) of hematoxylin and eosin (H&E)-stained SLNs from early-stage cervical cancer patients diagnosed with an SLN metastasis with either H&E or IHC. A CE-IVD certified commercially available deep learning algorithm, initially developed for detection of breast and colon cancer lymph node metastases, was employed off-label to assess its sensitivity in cervical cancer. : This study included 21 patients with early-stage cervical cancer, comprising 15 with squamous cell carcinoma, five with adenocarcinoma, and one with clear cell carcinoma. Among these patients, 10 had macrometastases and 11 had micrometastases in at least one SLN. The algorithm was applied to evaluate H&E WSIs of 47 SLN specimens, including 22 that were negative for metastasis, 13 with macrometastases, and 12 with micrometastases in the H&E slides. The algorithm detected all H&E macro- and micrometastases with 100% sensitivity. : This proof-of-principle study demonstrated high sensitivity of a deep learning algorithm for detection of clinically relevant SLN metastasis in early-stage cervical cancer, despite being originally developed for adenocarcinomas of the breast and colon. Our findings highlight the potential of leveraging an existing algorithm for use in cervical cancer, warranting further prospective validation in a larger population.
病理超分期是前哨淋巴结(SLN)定位的重要组成部分,包括连续切片和免疫组织化学(IHC)染色,以便可靠地检测临床相关转移灶。然而,超分期劳动强度大、耗时且成本高。深度学习算法提供了一种潜在的解决方案,可协助病理学家有效评估连续切片中的转移灶,减少工作量和成本,同时提高准确性。这项原理验证研究评估了一种深度学习算法在早期宫颈癌SLN转移检测中的有效性。
我们回顾性分析了经苏木精和伊红(H&E)染色的早期宫颈癌患者SLN的全切片图像(WSIs),这些患者经H&E或IHC诊断为SLN转移。一种CE-IVD认证的商用深度学习算法,最初是为检测乳腺癌和结肠癌淋巴结转移而开发的,现被用于非标签用途,以评估其在宫颈癌中的敏感性。
本研究纳入了21例早期宫颈癌患者,其中15例为鳞状细胞癌,5例为腺癌,1例为透明细胞癌。在这些患者中,10例在至少一个SLN中有大转移灶,11例有微转移灶。该算法被应用于评估47个SLN标本的H&E WSIs,其中包括22个在H&E切片中转移阴性的标本,13个有大转移灶的标本和12个有微转移灶的标本。该算法检测到所有H&E大转移灶和微转移灶,敏感性为100%。
这项原理验证研究表明,尽管一种深度学习算法最初是为乳腺癌和结肠癌腺癌开发的,但它在早期宫颈癌临床相关SLN转移检测中具有高敏感性。我们的研究结果突出了利用现有算法用于宫颈癌的潜力,值得在更大规模人群中进行进一步的前瞻性验证。