Department of Gastroenterology, Ruijin Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai, China.
Shanghai Key Laboratory of Multidimensional Information Processing, East China Normal University, Shanghai, China.
Cancer Med. 2023 Aug;12(16):17005-17017. doi: 10.1002/cam4.6335. Epub 2023 Jul 17.
Endoscopic ultrasonography-guided fine-needle aspiration/biopsy (EUS-FNA/B) is considered to be a first-line procedure for the pathological diagnosis of pancreatic cancer owing to its high accuracy and low complication rate. The number of new cases of pancreatic ductal adenocarcinoma (PDAC) is increasing, and its accurate pathological diagnosis poses a challenge for cytopathologists. Our aim was to develop a hyperspectral imaging (HSI)-based convolution neural network (CNN) algorithm to aid in the diagnosis of pancreatic EUS-FNA cytology specimens.
HSI images were captured of pancreatic EUS-FNA cytological specimens from benign pancreatic tissues (n = 33) and PDAC (n = 39) prepared using a liquid-based cytology method. A CNN was established to test the diagnostic performance, and Attribution Guided Factorization Visualization (AGF-Visualization) was used to visualize the regions of important classification features identified by the model.
A total of 1913 HSI images were obtained. Our ResNet18-SimSiam model achieved an accuracy of 0.9204, sensitivity of 0.9310 and specificity of 0.9123 (area under the curve of 0.9625) when trained on HSI images for the differentiation of PDAC cytological specimens from benign pancreatic cells. AGF-Visualization confirmed that the diagnoses were based on the features of tumor cell nuclei.
An HSI-based model was developed to diagnose cytological PDAC specimens obtained using EUS-guided sampling. Under the supervision of experienced cytopathologists, we performed multi-staged consecutive in-depth learning of the model. Its superior diagnostic performance could be of value for cytologists when diagnosing PDAC.
由于其准确性高、并发症发生率低,内镜超声引导下细针抽吸/活检(EUS-FNA/B)被认为是胰腺癌病理诊断的首选方法。胰腺导管腺癌(PDAC)的新发病例数量不断增加,其准确的病理诊断对细胞病理学家提出了挑战。我们的目的是开发一种基于高光谱成像(HSI)的卷积神经网络(CNN)算法,以辅助诊断胰腺 EUS-FNA 细胞学标本。
使用液基细胞学方法制备良性胰腺组织(n=33)和 PDAC(n=39)的胰腺 EUS-FNA 细胞学标本,采集 HSI 图像。建立 CNN 来测试诊断性能,并使用归因引导因子可视化(AGF-Visualization)可视化模型识别的重要分类特征区域。
共获得 1913 张 HSI 图像。我们的 ResNet18-SimSiam 模型在对 HSI 图像进行训练以区分 PDAC 细胞学标本与良性胰腺细胞时,准确率为 0.9204,灵敏度为 0.9310,特异性为 0.9123(曲线下面积为 0.9625)。AGF-Visualization 证实诊断是基于肿瘤细胞核特征。
开发了一种基于 HSI 的模型来诊断 EUS 引导取样获得的细胞学 PDAC 标本。在有经验的细胞病理学家的监督下,我们对模型进行了多阶段连续深度学习。当细胞病理学家诊断 PDAC 时,其优越的诊断性能可能具有重要价值。