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Combining machine learning and texture analysis to differentiate mediastinal lymph nodes in lung cancer patients

机译:结合机器学习和纹理分析区分在肺癌纵隔淋巴结癌症患者

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Evaluate whether texture analysis associated with machine learning approaches could differentiate between malignant and benign lymph nodes. A total 18 patients with lung cancer were selected, with 39 lymph nodes, being 15 malignant and 24 benign. Retrospective computed tomography scans were utilized both with and without contrast medium. The great differential of this work was the use of 15 textures from mediastinal lymph nodes, with five different physicians as operators. First and second order statistical textures such as gray level run length and co-occurrence matrix were extracted and applied to three different machine learning classifiers. The best machine learning classifier demonstrated a variability of less than 5% among operators. The support vector machine (SVM) classifier presented 95% of the area under the ROC curve (AUC) and 89% of sensitivity for sequences without contrast medium. SVM classifier presented 93% of AUC and 86% of sensitivity for sequences with contrast medium. Texture analysis and machine learning may be helpful in the differentiation between malign and benign lymph nodes. This study can aid the physician in diagnosis and staging of lymph nodes and potentially reduce the number of invasive analysis to histopathological confirmation.
机译:评估是否与纹理分析机器学习的方法可以区分恶性和良性淋巴结之间。18例肺癌患者选择39个淋巴结,15 24恶性和良性。回顾计算机断层扫描使用有无对比剂。大差的工作使用15从纵隔淋巴结质地,五个不同的医生作为运营商。二阶统计纹理如灰色水平运行长度和同现矩阵提取并应用于三种不同的机器学习分类器。分类器显示更少的变化运营商之间的5%以上。机(SVM)分类器的95%ROC曲线下面积(AUC)和89%的没有对比敏感度的序列媒介。86%的敏感性与对比序列媒介。在区分恶性是有益的和良性淋巴结。医生的诊断和分期淋巴结并有可能减少侵入性分析组织病理学确认。

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