Deep Learning and Radiomics for Gastric Cancer Lymph Node Metastasis: Automated Segmentation and Multi-Machine Learning Study from Two Centers.

IF 1.8 3区 医学 Q3 ONCOLOGY
Oncology Pub Date : 2025-02-13 DOI:10.1159/000544179
Hui Shang, Yue Fang, Yuyang Zhao, Nan Mi, Zhendong Cao, Yi Zheng
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引用次数: 0

Abstract

Introduction: The objective of this study was to develop an automated method for segmenting spleen computed tomography (CT) images using a deep learning model. This approach is intended to address the limitations of manual segmentation, which is known to be susceptible to interobserver variability. Subsequently, a prediction model of gastric cancer (GC) lymph node metastasis was constructed in conjunction with radiomics and deep learning features, and a nomogram was generated to explore the clinical guiding significance.

Methods: This study enrolled 284 patients with pathologically confirmed GC from two centers. We employed a deep learning model, U-Mamba, to obtain fully automatic segmentation of the spleen CT images. Subsequently, radiomics features and deep learning features were extracted from the entire spleen CT images, and significant features were identified through dimensionality reduction. The clinical features, radiomic features, and deep learning features were organized and integrated, and five machine learning methods were employed to develop 15 predictive models. Ultimately, the model exhibiting superior performance was presented in the form of a nomogram.

Results: A total of 12 radiomics features, 17 deep learning features, and 2 clinical features were deemed valuable. The DRC model demonstrated superior discriminative capacity relative to other models. A nomogram was constructed based on the logistic clinical model to facilitate the usage and verification of the clinical model.

Conclusion: Radiomics and deep learning features derived from automated spleen segmentation to construct a nomogram demonstrate efficacy in predicting lymph node metastasis in GC. Concurrently, fully automated segmentation provides a novel and reproducible approach for radiomics research.

胃癌淋巴结转移的深度学习和放射组学:两个中心的自动分割和多机器学习研究。
目的:本研究的目的是开发一种使用深度学习模型自动分割脾脏计算机断层扫描(CT)图像的方法。这种方法旨在解决人工分割的局限性,因为人工分割容易受到观察者之间可变性的影响。随后,结合放射组学和深度学习特征构建胃癌(GC)淋巴结转移预测模型,并生成nomogram,探讨其临床指导意义。方法:本研究纳入来自两个中心的284例病理证实的胃癌患者。我们采用深度学习模型U-Mamba对脾脏CT图像进行全自动分割。随后,从整个脾脏CT图像中提取放射组学特征和深度学习特征,并通过降维识别出重要特征。将临床特征、放射学特征、深度学习特征进行组织整合,采用5种机器学习方法建立15个预测模型。最后,以图的形式给出了表现出较优性能的模型。结果:共有12个放射组学特征、17个深度学习特征和2个临床特征被认为有价值。与其他模型相比,DRC模型表现出更强的判别能力。为了便于临床模型的使用和验证,在logistic临床模型的基础上构建了nomogram。结论:基于自动脾脏分割的放射组学和深度学习特征可以有效预测GC中的LNM。同时,全自动分割为放射组学研究提供了一种新颖的、可重复的方法。
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来源期刊
Oncology
Oncology 医学-肿瘤学
CiteScore
6.00
自引率
2.90%
发文量
76
审稿时长
6-12 weeks
期刊介绍: Although laboratory and clinical cancer research need to be closely linked, observations at the basic level often remain removed from medical applications. This journal works to accelerate the translation of experimental results into the clinic, and back again into the laboratory for further investigation. The fundamental purpose of this effort is to advance clinically-relevant knowledge of cancer, and improve the outcome of prevention, diagnosis and treatment of malignant disease. The journal publishes significant clinical studies from cancer programs around the world, along with important translational laboratory findings, mini-reviews (invited and submitted) and in-depth discussions of evolving and controversial topics in the oncology arena. A unique feature of the journal is a new section which focuses on rapid peer-review and subsequent publication of short reports of phase 1 and phase 2 clinical cancer trials, with a goal of insuring that high-quality clinical cancer research quickly enters the public domain, regardless of the trial’s ultimate conclusions regarding efficacy or toxicity.
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