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用于多形性腺瘤和多形性腺瘤癌变之间微观诊断的卷积神经网络的开发与评估

Development and Evaluation of a Convolutional Neural Network for Microscopic Diagnosis Between Pleomorphic Adenoma and Carcinoma Ex-Pleomorphic Adenoma.

作者信息

Sousa-Neto Sebastião Silvério, Nakamura Thaís Cerqueira Reis, Giraldo-Roldan Daniela, Dos Santos Giovanna Calabrese, Fonseca Felipe Paiva, de Cáceres Cinthia Verónica Bardález López, Rangel Ana Lúcia Carrinho Ayroza, Martins Manoela Domingues, Martins Marco Antonio Trevizani, Gabriel Amanda De Farias, Zanella Virgilio Gonzales, Santos-Silva Alan Roger, Lopes Marcio Ajudarte, Kowalski Luiz Paulo, Araújo Anna Luíza Damaceno, Moraes Matheus Cardoso, Vargas Pablo Agustin

机构信息

Departmento de Diagnóstico Oral, Faculdade de Odontologia de Piracicaba, Universidade Estadual de Campinas (FOP-UNICAMP), Piracicaba, São Paulo, Brazil.

Institute of Science and Technology, Federal University of São Paulo (ICT-UNIFESP), São José dos Campos, São Paulo, Brazil.

出版信息

Head Neck. 2025 Mar;47(3):832-838. doi: 10.1002/hed.27971. Epub 2024 Oct 27.

Abstract

AIMS

To develop a model capable of distinguishing carcinoma ex-pleomorphic adenoma from pleomorphic adenoma using a convolutional neural network architecture.

METHODS AND RESULTS

A cohort of 83 Brazilian patients, divided into carcinoma ex-pleomorphic adenoma (n = 42) and pleomorphic adenoma (n = 41), was used for training a convolutional neural network. The whole-slide images were annotated and fragmented into 743 869 (carcinoma ex-pleomorphic adenomas) and 211 714 (pleomorphic adenomas) patches, measuring 224 × 224 pixels. Training (80%), validation (10%), and test (10%) subsets were established. The Residual Neural Network (ResNet)-50 was chosen for its recognition and classification capabilities. The training and validation graphs, and parameters derived from the confusion matrix, were evaluated. The loss curve recorded 0.63, and the accuracy reached 0.93. Evaluated parameters included specificity (0.88), sensitivity (0.94), precision (0.96), F1 score (0.95), and area under the curve (0.97).

CONCLUSIONS

The study underscores the potential of ResNet-50 in the microscopic diagnosis of carcinoma ex-pleomorphic adenoma. The developed model demonstrated strong learning potential, but exhibited partial limitations in generalization, as indicated by the validation curve. In summary, the study established a promising baseline despite limitations in model generalization. This indicates the need to refine methodologies, investigate new models, incorporate larger datasets, and encourage inter-institutional collaboration for comprehensive studies in salivary gland tumors.

摘要

目的

利用卷积神经网络架构开发一种能够区分多形性腺瘤癌变与多形性腺瘤的模型。

方法与结果

选取83例巴西患者组成队列,分为多形性腺瘤癌变组(n = 42)和多形性腺瘤组(n = 41),用于训练卷积神经网络。对全切片图像进行标注,并分割成743869个(多形性腺瘤癌变)和211714个(多形性腺瘤)大小为224×224像素的图像块。建立训练集(80%)、验证集(10%)和测试集(10%)。选择残差神经网络(ResNet)-50是因其具有识别和分类能力。对训练和验证图以及从混淆矩阵得出的参数进行评估。损失曲线记录为0.63,准确率达到0.93。评估参数包括特异性(0.88)、敏感性(0.94)、精确率(0.96)、F1分数(0.95)和曲线下面积(0.97)。

结论

该研究强调了ResNet-50在多形性腺瘤癌变微观诊断中的潜力。所开发的模型显示出强大的学习潜力,但如验证曲线所示,在泛化方面存在部分局限性。总之,尽管模型泛化存在局限性,但该研究建立了一个有前景的基线。这表明需要改进方法、研究新模型、纳入更大的数据集,并鼓励机构间合作以开展唾液腺肿瘤的综合研究。

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