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SVM based lung cancer diagnosis using multiple image features in PET/CT

机译:在PET / CT中使用多个图像特征进行基于SVM的肺癌诊断

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In this project, we assessed the clinical value of tumor heterogeneity measured with 18F-FLT as a biomarker for lung cancer diagnosis and staging, then compared its performance to traditional image features using final pathology as gold standard. We also proposed to apply support vector machine (SVM) to train a vector of image features including heterogeneity extracted from PET image and CT texture features to improve the diagnosis and staging for lung cancer. Thirty-two subjects with lung nodules (19 M, 13 F, age 70 ± 9 y) who underwent 18F-FLT PET/CT scans were included in our study. We applied the global Moran I(d) analysis to characterize the intra-tumor heterogeneity on PET images 1h post-injection. Other than texture analysis that widely used in heterogeneity prediction, I(d) statistic is a measure of spatial autocorrelation characterized by the correlation among 3D neighboring voxels. Other image features including SUV and CT texture were extracted from PET/CT images. Then we trained and applied a SVM based statistical machine learning tool to fuse the features and test the SVM performance in classifying patient groups: benign/early malignant and early/advanced malignant. Heterogeneity derived from 18F-FLT images significantly differentiated benign (0.24 ± 0.09, N = 9) from early stage malignancy (0.40 ± 0.09, N = 10; P = 0.002), as well as early stage from advanced stage malignancy (0.50 ± 0.07, N = 13, P = 0.005). Other image features, SUVmean and CT texture, didn't demonstrated similar capability. Intra-tumor heterogeneity showed superior performance than other traditional image features when single feature was applied to staging. Furthermore, the SVM classification showed that best performance of staging was achieved when all image features are combined in the SVM training. In conclusion, we obtained a novel measurement of intra-tumor heterogeneity which has promising performance for diagnosis and staging of lung cancer. We demonstrated the feasibility of performing SVM based cancer staging using multiple image features in PET/CT. SVM analysis and classification with combination of effective features has great potential to augment diagnostic accuracy and improve tumor staging in oncological practice.
机译:在该项目中,我们评估了用18F-FLT作为肺癌诊断和分期的生物标志物测得的肿瘤异质性的临床价值,然后使用最终病理学作为金标准将其性能与传统图像特征进行了比较。我们还建议应用支持向量机(SVM)来训练图像特征向量,包括从PET图像中提取的异质性和CT纹理特征,以改善肺癌的诊断和分期。我们的研究包括了接受18F-FLT PET / CT扫描的32例肺结节(19 M,13 F,年龄70±9岁)。我们应用了全局Moran I(d)分析来表征注射后1h的PET图像上的肿瘤内异质性。除了在异质性预测中广泛使用的纹理分析之外,I(d)统计量是一种空间自相关性的度量,其特征在于3D相邻体素之间的相关性。从PET / CT图像中提取了其他图像特征,包括SUV和CT纹理。然后,我们训练并应用了基于SVM的统计机器学习工具,以融合这些功能并测试SVM在分类患者组方面的性能:良性/早期恶性和早期/晚期恶性。从18F-FLT图像得出的异质性将良性(0.24±0.09,N = 9)与早期恶性肿瘤(0.40±0.09,N = 10; P = 0.002)以及早期晚期恶性肿瘤(0.50±0.07)显着区分开,N = 13,P = 0.005)。其他图像功能(SUVmean和CT纹理)没有表现出类似的功能。当将单个特征应用于分期时,肿瘤内异质性表现出优于其他传统图像特征的性能。此外,SVM分类显示,在SVM训练中将所有图像特征组合在一起时,可以达到最佳的分期性能。总之,我们获得了一种新的肿瘤内异质性检测方法,该方法在肺癌的诊断和分期中具有广阔的应用前景。我们证明了在PET / CT中使用多个图像特征执行基于SVM的癌症分期的可行性。支持向量机的分析和分类与有效特征的结合在肿瘤实践中具有提高诊断准确性和改善肿瘤分期的巨大潜力。

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