基于双模态超声图像和临床指标的深度学习驱动的恶性软组织肿瘤诊断

Haiqin Xie, Yudi Zhang, Licong Dong, Heng Lv, Xuechen Li, Chenyang Zhao, Yun Tian, Lu Xie, Wangjie Wu, Qi Yang, Li Liu, Desheng Sun, Li Qiu, Linlin Shen, Yusen Zhang
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引用次数: 0

摘要

软组织肿瘤(Soft tissue tumors,STTs)是指发生于全身软组织的良性或恶性浅表肿瘤,病理类型多样。本研究旨在建立一个深度学习(DL)驱动的人工智能(AI)系统,根据 US 图像和患者的临床指标预测恶性 STT。为了验证系统的准确性,我们使用了一个包含 44 个恶性肿块和 101 个良性肿块的前瞻性数据集。开发了一个多数据融合卷积神经网络,命名为超声临床软组织肿瘤网络(UC-STTNet),将灰度和彩色多普勒 US 图像与临床特征相结合,用于恶性 STTs 诊断。该人工智能系统在回顾性数据集中的接收者工作曲线下面积(AUC)值达到了 0.89。人工智能系统的诊断性能高于其中一位资深放射科医生(人工智能与 R2 相比的 AUC 值:0.89 与 0.84 相比,p=0.022)以及所有中级和初级放射科医生(人工智能与 R3、R4、R5、R6 相比的 AUC 值:0.89 与 0.75、0.81、0.80、0.63 相比;p <0.01)。在前瞻性数据集中,人工智能系统的 AUC 也达到了 0.85。在该系统的帮助下,放射科医生的诊断性能和观察者之间的一致性得到了改善(R3、R5、R6 的 AUC:0.75 至 0.83、0.80 至 0.85、0.63 至 0.69;p<0.01)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning driven diagnosis of malignant soft tissue tumors based on dual-modal ultrasound images and clinical indexes
Soft tissue tumors (STTs) are benign or malignant superficial neoplasms arising from soft tissues throughout the body with versatile pathological types. Although Ultrasonography (US) is one of the most common imaging tools to diagnose malignant STTs, it still has several drawbacks in STT diagnosis that need improving.The study aims to establish this deep learning (DL) driven Artificial intelligence (AI) system for predicting malignant STTs based on US images and clinical indexes of the patients.We retrospectively enrolled 271 malignant and 462 benign masses to build the AI system using 5-fold validation. A prospective dataset of 44 malignant masses and 101 benign masses was used to validate the accuracy of system. A multi-data fusion convolutional neural network, named ultrasound clinical soft tissue tumor net (UC-STTNet), was developed to combine gray scale and color Doppler US images and clinic features for malignant STTs diagnosis. Six radiologists (R1-R6) with three experience levels were invited for reader study.The AI system achieved an area under receiver operating curve (AUC) value of 0.89 in the retrospective dataset. The diagnostic performance of the AI system was higher than that of one of the senior radiologists (AUC of AI vs R2: 0.89 vs. 0.84, p=0.022) and all of the intermediate and junior radiologists (AUC of AI vs R3, R4, R5, R6: 0.89 vs 0.75, 0.81, 0.80, 0.63; p <0.01). The AI system also achieved an AUC of 0.85 in the prospective dataset. With the assistance of the system, the diagnostic performances and inter-observer agreement of the radiologists was improved (AUC of R3, R5, R6: 0.75 to 0.83, 0.80 to 0.85, 0.63 to 0.69; p<0.01).The AI system could be a useful tool in diagnosing malignant STTs, and could also help radiologists improve diagnostic performance.
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