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用于提高经阴道超声检测子宫内膜癌和子宫内膜非典型增生准确性的人工智能模型。

Artificial intelligence model for enhancing the accuracy of transvaginal ultrasound in detecting endometrial cancer and endometrial atypical hyperplasia.

机构信息

Department of Women, Children and Public Health Sciences, Gynecologic Oncology Unit, Fondazione Policlinico Universitario Agostino Gemelli IRCCS, Roma, Italy.

Department of Obstetrics and Gynecology, Division of Gynecologic Oncology, Mayo Clinic, Rochester, Minnesota, USA.

出版信息

Int J Gynecol Cancer. 2024 Oct 7;34(10):1547-1555. doi: 10.1136/ijgc-2024-005652.

Abstract

OBJECTIVES

Transvaginal ultrasound is typically the initial diagnostic approach in patients with postmenopausal bleeding for detecting endometrial atypical hyperplasia/cancer. Although transvaginal ultrasound demonstrates notable sensitivity, its specificity remains limited. The objective of this study was to enhance the diagnostic accuracy of transvaginal ultrasound through the integration of artificial intelligence. By using transvaginal ultrasound images, we aimed to develop an artificial intelligence based automated segmentation model and an artificial intelligence based classifier model.

METHODS

Patients with postmenopausal bleeding undergoing transvaginal ultrasound and endometrial sampling at Mayo Clinic between 2016 and 2021 were retrospectively included. Manual segmentation of images was performed by four physicians (readers). Patients were classified into cohort A (atypical hyperplasia/cancer) and cohort B (benign) based on the pathologic report of endometrial sampling. A fully automated segmentation model was developed, and the performance of the model in correctly identifying the endometrium was compared with physician made segmentation using similarity metrics. To develop the classifier model, radiomic features were calculated from the manually segmented regions-of-interest. These features were used to train a wide range of machine learning based classifiers. The top performing machine learning classifier was evaluated using a threefold approach, and diagnostic accuracy was assessed through the F1 score and area under the receiver operating characteristic curve (AUC-ROC).

RESULTS

302 patients were included. Automated segmentation-reader agreement was 0.79±0.21 using the Dice coefficient. For the classification task, 92 radiomic features related to pixel texture/shape/intensity were found to be significantly different between cohort A and B. The threefold evaluation of the top performing classifier model showed an AUC-ROC of 0.90 (range 0.88-0.92) on the validation set and 0.88 (range 0.86-0.91) on the hold-out test set. Sensitivity and specificity were 0.87 (range 0.77-0.94) and 0.86 (range 0.81-0.94), respectively.

CONCLUSIONS

We trained an artificial intelligence based algorithm to differentiate endometrial atypical hyperplasia/cancer from benign conditions on transvaginal ultrasound images in a population of patients with postmenopausal bleeding.

摘要

目的

经阴道超声检查通常是绝经后出血患者检测子宫内膜非典型增生/癌的初始诊断方法。尽管经阴道超声检查具有显著的敏感性,但特异性仍然有限。本研究的目的是通过人工智能的整合来提高经阴道超声的诊断准确性。我们使用经阴道超声图像,旨在开发一种基于人工智能的自动分割模型和一种基于人工智能的分类器模型。

方法

回顾性纳入 2016 年至 2021 年间在梅奥诊所因绝经后出血接受经阴道超声和子宫内膜取样的患者。由四位医生(读者)对图像进行手动分割。根据子宫内膜取样的病理报告,将患者分为队列 A(非典型增生/癌)和队列 B(良性)。开发了一个完全自动化的分割模型,并使用相似性指标比较了模型正确识别子宫内膜的性能与医生进行的分割。为了开发分类器模型,从手动分割的感兴趣区域计算了放射组学特征。这些特征被用于训练广泛的基于机器学习的分类器。使用三折法评估性能最佳的机器学习分类器,并通过 F1 分数和接收器操作特征曲线下面积(AUC-ROC)评估诊断准确性。

结果

共纳入 302 例患者。使用 Dice 系数,自动分割-读者的一致性为 0.79±0.21。对于分类任务,发现队列 A 和 B 之间 92 个与像素纹理/形状/强度相关的放射组学特征存在显著差异。性能最佳的分类器模型的三折评估在验证集上的 AUC-ROC 为 0.90(范围 0.88-0.92),在保留测试集上为 0.88(范围 0.86-0.91)。敏感性和特异性分别为 0.87(范围 0.77-0.94)和 0.86(范围 0.81-0.94)。

结论

我们在一个绝经后出血患者人群中,基于人工智能的算法对经阴道超声图像上的子宫内膜非典型增生/癌与良性病变进行了区分。

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