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首页> 外文期刊>Magma: Magnetic resonance materials in physics, biology, and medicine >Benign /malignant classifier of soft tissue tumors using MR imaging
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Benign /malignant classifier of soft tissue tumors using MR imaging

机译:MR成像对软组织肿瘤的良恶性分类

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摘要

This article presents a pattern-recognition approach to the soft tissue tumors (STT) benign/malignant character diagnosis using magnetic resonance (MR) imaging applied to a large multicenter database. Objective: To develop and test an automatic classifier of STT into benign or malignant by using classical MR imaging findings and epidemiological information. Materials and methods: A database of 430 patients (62% benign and 38% malignant) from several European multicenter registers. There were 61 different histologies (36 with benign and 25 with malignant nature). Three pattern-recognition methods (artificial neural networks, support vector machine, k-nearest neighbor) were applied to learn the discrimination between benignity and malignancy based on a defined MR imaging findings protocol. After the systems had learned by using training samples (with 302 cases), the clinical decision support system was tested in the diagnosis of 128 new STT cases. Results: An 88–92% efficacy was obtained in a not-viewed set of tumors using the pattern-recognition techniques. The best results were obtained with a back-propagation artificial neural network. Conclusion: Benign vs. malignant STT discrimination is accurate by using pattern-recognition methods based on classical MR image findings. This objective tool will assist radiologists in STT grading.
机译:本文提出了一种模式识别方法,可应用到大型多中心数据库的磁共振(MR)成像技术对软组织肿瘤(STT)良/恶性特征进行诊断。目的:利用经典MR影像学发现和流行病学信息,开发和测试STT自动分类器为良性还是恶性。资料和方法:来自多个欧洲多中心登记处的430名患者(良性62%,恶性38%)的数据库。有61种不同的组织学(良性36种,恶性25种)。三种模式识别方法(人工神经网络,支持向量机,k近邻)用于基于已定义的MR影像学发现方案来区分良性和恶性。系统通过使用训练样本(302例)获悉后,对临床决策支持系统进行了128例新STT病例诊断的测试。结果:使用模式识别技术在一组未观察到的肿瘤中获得了88-92%的疗效。使用反向传播人工神经网络可获得最佳结果。结论:通过使用基于经典MR图像发现的模式识别方法,对良性与恶性STT的辨别是准确的。该客观工具将帮助放射科医生进行STT分级。

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