非肿块型乳腺癌的常规影像及影像组学诊断进展
Advances in Conventional Imaging and Radiomics Diagnosis of Non-Mass Breast Cancer
摘要: 在临床工作中,许多患有乳腺癌的患者未必呈现明显的肿块或结节,而是呈现非肿块型病变,具有弥散分布、不明确的轮廓以及模糊的占位表现,极易造成漏诊、误诊。目前,此病变的主要诊断方式包括超声、乳腺钼靶X线检查及磁共振成像等。影像组学的不断发展与完善为非肿块型乳腺癌的诊断提供了新的应用方向。本文旨在对乳腺非肿块型乳腺癌的常规影像及影像组学诊断进展进行概述。
Abstract: In clinical work, many patients with breast cancer may not present obvious lumps or nodules, but rather non-massive lesions with diffuse distribution, unclear contours, and ambiguous occupying manifestations, which can easily lead to missed diagnosis and misdiagnosis. Currently, the main di-agnostic is conventional ultrasound, mammography, and magnetic resonance imaging. The contin-uous development and improvement of radiomics offer fresh avenues for diagnosing breast cancer that lacks distinct masses. The purpose of this paper is to provide an overview of conventional im-aging and the progress of diagnosis by radiomics of non-mass breast cancer.
文章引用:邱琳, 组木热提·吐尔洪, 冷晓玲. 非肿块型乳腺癌的常规影像及影像组学诊断进展[J]. 临床医学进展, 2023, 13(10): 16394-16400. https://doi.org/10.12677/ACM.2023.13102294

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