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小于10毫米结节的肺腺癌亚型深度学习特征的可重复性和再现性:一项多中心薄层计算机断层扫描体模和临床验证研究。

Repeatability and reproducibility of deep learning features for lung adenocarcinoma subtypes with nodules less than 10 mm in size: a multicenter thin-slice computed tomography phantom and clinical validation study.

作者信息

Zhan Yi, Dai Renxiang, Li Fangyun, Cheng Zenghui, Zhuo Yaoyao, Shan Fei, Zhou Lingxiao

机构信息

Department of Radiology, Shanghai Public Health Clinical Center, Fudan University, Shanghai, China.

Institute of Microscale Optoelectronics, Shenzhen University, Shenzhen, China.

出版信息

Quant Imaging Med Surg. 2024 Aug 1;14(8):5396-5407. doi: 10.21037/qims-24-77. Epub 2024 Jul 30.

Abstract

BACKGROUND

Deep learning features (DLFs) derived from radiomics features (RFs) fused with deep learning have shown potential in enhancing diagnostic capability. However, the limited repeatability and reproducibility of DLFs across multiple centers represents a challenge in the clinically validation of these features. This study thus aimed to evaluate the repeatability and reproducibility of DLFs and their potential efficiency in differentiating subtypes of lung adenocarcinoma less than 10 mm in size and manifesting as ground-glass nodules (GGNs).

METHODS

A chest phantom with nodules was scanned repeatedly using different thin-slice computed tomography (TSCT) scanners with varying acquisition and reconstruction parameters. The robustness of the DLFs was measured using the concordance correlation coefficient (CCC) and intraclass correlation coefficient (ICC). A deep learning approach was used for visualizing the DLFs. To assess the clinical effectiveness and generalizability of the stable and informative DLFs, three hospitals were used to source 275 patients, in whom 405 nodules were pathologically differentially diagnosed as GGN lung adenocarcinoma less than 10 mm in size and were retrospectively reviewed for clinical validation.

RESULTS

A total of 64 DLFs were analyzed, which revealed that the variables of slice thickness and slice interval (ICC, 0.79±0.18) and reconstruction kernel (ICC, 0.82±0.07) were significantly associated with the robustness of DLFs. Feature visualization showed that the DLFs were mainly focused around the nodule areas. In the external validation, a subset of 28 robust DLFs identified as stable under all sources of variability achieved the highest area under curve [AUC =0.65, 95% confidence interval (CI): 0.53-0.76] compared to other DLF models and the radiomics model.

CONCLUSIONS

Although different manufacturers and scanning schemes affect the reproducibility of DLFs, certain DLFs demonstrated excellent stability and effectively improved diagnostic the efficacy for identifying subtypes of lung adenocarcinoma. Therefore, as the first step, screening stable DLFs in multicenter DLFs research may improve diagnostic efficacy and promote the application of these features.

摘要

背景

从与深度学习融合的放射组学特征(RFs)中衍生出的深度学习特征(DLFs)在增强诊断能力方面已显示出潜力。然而,DLFs在多个中心的有限重复性和再现性对这些特征的临床验证构成了挑战。因此,本研究旨在评估DLFs的重复性和再现性及其在鉴别大小小于10mm且表现为磨玻璃结节(GGNs)的肺腺癌亚型方面的潜在效率。

方法

使用具有不同采集和重建参数的不同薄层计算机断层扫描(TSCT)扫描仪对带有结节的胸部模型进行反复扫描。使用一致性相关系数(CCC)和组内相关系数(ICC)来衡量DLFs的稳健性。采用深度学习方法对DLFs进行可视化。为了评估稳定且信息丰富的DLFs的临床有效性和普遍性,选取了三家医院的275例患者,其中405个结节经病理鉴别诊断为大小小于10mm的GGN肺腺癌,并对其进行回顾性临床验证。

结果

共分析了64个DLFs,结果显示层厚和层间距变量(ICC,0.79±0.18)以及重建核(ICC,0.82±0.07)与DLFs的稳健性显著相关。特征可视化显示DLFs主要集中在结节区域周围。在外部验证中,与其他DLF模型和放射组学模型相比,在所有变异来源下被确定为稳定的28个稳健DLFs子集实现了最高的曲线下面积[AUC =0.65,95%置信区间(CI):0.53 - 0.76]。

结论

尽管不同制造商和扫描方案会影响DLFs的再现性,但某些DLFs表现出优异的稳定性,并有效提高了鉴别肺腺癌亚型的诊断效能。因此,作为第一步,在多中心DLFs研究中筛选稳定的DLFs可能会提高诊断效能并促进这些特征的应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e79f/11320509/b86945aa4a04/qims-14-08-5396-f1.jpg

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