开发和验证一种半自动放射组学综合模型,用于乳房切开术辅助微创切除术中乳房肿块的术前评估。

IF 1.5 3区 医学 Q3 SURGERY
Gland surgery Pub Date : 2025-03-31 Epub Date: 2025-03-26 DOI:10.21037/gs-24-440
Zhenfeng Huang, Qingqing Zhu, Yijie Li, Kunyi Wang, Yideng Zhang, Qiaowei Zhong, Yi Li, Qingan Zeng, Haihong Zhong
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引用次数: 0

摘要

背景:乳腺肿块的术前准确鉴别对于指导乳房切开术辅助微创切除术的个体化治疗策略至关重要。虽然放射组学显示出希望,但现有的方法依赖于人工描绘,这既耗时又主观。本研究开发了一种基于超声的半自动分割集成模型,以改善术前评估。方法:回顾性分析773例患者术前超声图像(543例肿瘤,230例非肿瘤)。采用DeepLabv3_ResNet50和全卷积网络(FCN)_ResNet50进行半自动分割。提取放射组学和深度迁移学习(DTL)特征,构建放射组学、深度学习和组合模型。综合策略将这些与临床模型相结合。通过受试者工作特征(ROC)曲线和决策曲线分析(DCA)评估治疗效果。结果:纳入肿瘤患者543例,非肿瘤患者230例(腺病95例,其他良性病变135例)。半自动分割模型DeepLabv3_ResNet50在其最佳时期实现了99.4%的峰值全局精度和92.0%的平均Dice系数。另一方面,FCN_ResNet50模型在其最佳历元时的峰值全球精度为99.5%,平均Dice系数为93.7%。在预测肿瘤和非肿瘤患者的任务中,最终确定年龄、最大直径和BI-RADS (Breast Imaging Reporting and Data System)分类为关键指标,叠加模型最终显示训练队列的曲线下面积(AUC)为0.890(敏感性为0.844,特异性为0.815),测试队列的AUC为0.780(敏感性为0.713,特异性为0.739)。在预测腺病等病变类型时,焦点成为关键因素,叠加模型在训练组的AUC为0.813(灵敏度为0.613,特异性为0.859),在测试组的AUC为0.771(灵敏度为0.759,特异性为0.765)。结论:本研究建立了基于半自动分割技术的集成学习模型。该模型在术前准确区分肿瘤和非肿瘤患者,并在非肿瘤队列中区分腺病和其他病变类型,从而为个体化治疗方案提供有价值的见解。与人工检查相比,所提出的叠加模型通过减少不必要的活检和节省诊断时间,证明了显著的临床效用。这些改进直接解决了乳房病变管理中过度治疗和诊断延误的挑战。通过提高术前准确性,我们的模型支持量身定制的手术计划,减轻患者与不确定诊断相关的焦虑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development and validation of a semi-automatic radiomics ensemble model for preoperative evaluation of breast masses in mammotome-assisted minimally invasive resection.

Background: Accurate preoperative differentiation of breast masses is critical for guiding individualized treatment strategies in Mammotome-assisted minimally invasive resection. While radiomics shows promise, existing methods rely on manual delineation, which is time-consuming and subjective. This study developed an ultrasound-based semi-automatic segmentation ensemble model to improve preoperative assessment.

Methods: We retrospectively analyzed preoperative ultrasound images from 773 patients (543 tumors, 230 non-tumors). Semi-automatic segmentation was performed using DeepLabv3_ResNet50 and fully convolutional network (FCN)_ResNet50. Radiomic and deep transfer learning (DTL) features were extracted to construct radiomic, deep learning, and combined models. An ensemble strategy integrated these with clinical models. Performance was evaluated via receiver operating characteristic (ROC) curves and decision curve analysis (DCA).

Results: The cohort included 543 tumor patients and 230 non-tumor patients (95 adenosis, 135 other benign lesions). The semi-automatic segmentation model, DeepLabv3_ResNet50, achieved a peak global accuracy of 99.4% and an average Dice coefficient of 92.0% at its best epoch. On the other hand, the FCN_ResNet50 model exhibited a peak global accuracy of 99.5% and an average Dice coefficient of 93.7% at its best epoch. In the task of predicting tumor and non-tumor patients, age, maximum diameter, and BI-RADS (Breast Imaging Reporting and Data System) classification were ultimately identified as key indicators, and the stacking model ultimately demonstrated an area under the curve (AUC) of 0.890 in the training cohort (with a sensitivity of 0.844 and a specificity of 0.815) and an AUC of 0.780 in the testing cohort (with a sensitivity of 0.713 and a specificity of 0.739). In the task of predicting adenosis and other lesion types, focus emerged as a crucial factor, and the stacking model achieved an AUC of 0.813 in the training cohort (with a sensitivity of 0.613 and a specificity of 0.859) and an AUC of 0.771 in the testing cohort (with a sensitivity of 0.759 and a specificity of 0.765).

Conclusions: Our study has established an ensemble learning model grounded in semi-automatic segmentation techniques. This model accurately distinguishes between tumor and non-tumor patients preoperatively, as well as discriminating adenosis from other lesion types among the non-tumor cohort, thus providing valuable insights for individualized treatment planning. The proposed stacking model demonstrates significant clinical utility by reducing unnecessary biopsies and saving diagnostic time compared to manual review. These improvements directly address the challenges of overtreatment and diagnostic delays in breast lesion management. By enhancing preoperative accuracy, our model supports tailored surgical planning and alleviates patient anxiety associated with indeterminate diagnoses.

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来源期刊
Gland surgery
Gland surgery Medicine-Surgery
CiteScore
3.60
自引率
0.00%
发文量
113
期刊介绍: Gland Surgery (Gland Surg; GS, Print ISSN 2227-684X; Online ISSN 2227-8575) being indexed by PubMed/PubMed Central, is an open access, peer-review journal launched at May of 2012, published bio-monthly since February 2015.
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