拓扑放射组学分析在预测肺磨玻璃结节恶性风险中的价值:一项多中心研究

IF 2.7 4区 医学 Q3 ONCOLOGY Technology in Cancer Research & Treatment Pub Date : 2024-01-01 DOI:10.1177/15330338241287089
Miaoyu Wang, Yuanhui Wei, Minghui Zhu, Hang Yu, Chaomin Guo, Zhigong Chen, Wenjia Shi, Jiabo Ren, Wei Zhao, Zhen Yang, Liang-An Chen
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引用次数: 0

摘要

背景:肺部 CT 扫描中恶性磨玻璃结节(GGN)的早期发现和准确鉴别对于有效治疗肺腺癌至关重要。然而,现有的成像诊断方法往往难以在早期阶段区分良性和恶性地玻璃结节。本研究旨在通过拓扑数据分析和纹理分析这两种放射组学方法,预测肺部CT扫描中观察到的GGN的恶性风险:在2018年1月至2023年6月期间,对两个中心的3223名患者进行了回顾性分析。数据集被分为训练集、测试集和验证集,以确保模型开发和验证的稳健性。我们利用基于同源性的放射组学分析,开发了适用于 GGN 的拓扑特征。这种创新方法强调整合拓扑信息,捕捉 GGN 内复杂的几何和空间关系。通过结合机器学习和深度学习算法,我们建立了一个预测模型,该模型整合了临床参数、以往的放射组学特征和拓扑放射组学特征:结果:将拓扑放射组学纳入我们的模型大大提高了区分良性和恶性GGN的能力。在两个独立验证集中,拓扑放射组学模型的曲线下面积(AUC)分别达到了0.85和0.862,优于之前的放射组学模型。此外,与仅基于临床参数的模型相比,该模型的灵敏度更高,在验证集 1 中的灵敏度为 80.7%,在验证集 2 中的灵敏度为 82.3%。最全面的模型结合了临床参数、先前的放射组学特征和拓扑放射组学特征,在所有数据集中获得了最高的AUC值0.879:本研究验证了拓扑放射组学在提高区分良性和恶性 GGN 的预测性能方面的潜力。通过将拓扑特征与先前的放射组学和临床参数相结合,我们的综合模型为制定 GGN 患者的治疗策略提供了更准确、更可靠的依据。
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The Value of Topological Radiomics Analysis in Predicting Malignant Risk of Pulmonary Ground-Glass Nodules: A Multi-Center Study.

Background: Early detection and accurate differentiation of malignant ground-glass nodules (GGNs) in lung CT scans are crucial for the effective treatment of lung adenocarcinoma. However, existing imaging diagnostic methods often struggle to distinguish between benign and malignant GGNs in the early stages. This study aims to predict the malignancy risk of GGNs observed in lung CT scans by applying two radiomics methods: topological data analysis and texture analysis.

Methods: A retrospective analysis was conducted on 3223 patients from two centers between January 2018 and June2023. The dataset was divided into training, testing, and validation sets to ensure robust model development and validation. We developed topological features applied to GGNs using radiomics analysis based on homology. This innovative approach emphasizes the integration of topological information, capturing complex geometric and spatial relationships within GGNs. By combining machine learning and deep learning algorithms, we established a predictive model that integrates clinical parameters, previous radiomics features, and topological radiomics features.

Results: Incorporating topological radiomics into our model significantly enhanced the ability to distinguish between benign and malignant GGNs. The topological radiomics model achieved areas under the curve (AUC) of 0.85 and 0.862 in two independent validation sets, outperforming previous radiomics models. Furthermore, this model demonstrated higher sensitivity compared to models based solely on clinical parameters, with sensitivities of 80.7% in validation set 1 and 82.3% in validation set 2. The most comprehensive model, which combined clinical parameters, previous radiomics features, and topological radiomics features, achieved the highest AUC value of 0.879 across all datasets.

Conclusion: This study validates the potential of topological radiomics in improving the predictive performance for distinguishing between benign and malignant GGNs. By integrating topological features with previous radiomics and clinical parameters, our comprehensive model provides a more accurate and reliable basis for developing treatment strategies for patients with GGNs.

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来源期刊
CiteScore
4.40
自引率
0.00%
发文量
202
审稿时长
2 months
期刊介绍: Technology in Cancer Research & Treatment (TCRT) is a JCR-ranked, broad-spectrum, open access, peer-reviewed publication whose aim is to provide researchers and clinicians with a platform to share and discuss developments in the prevention, diagnosis, treatment, and monitoring of cancer.
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