Automatic lung nodule classification with radiomics approach

Jingchen Ma, Qian Wang, Yacheng Ren, Haibo Hu, Jun Zhao
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引用次数: 43

Abstract

Lung cancer is the first killer among the cancer deaths. Malignant lung nodules have extremely high mortality while some of the benign nodules don't need any treatment .Thus, the accuracy of diagnosis between benign or malignant nodules diagnosis is necessary. Notably, although currently additional invasive biopsy or second CT scan in 3 months later may help radiologists to make judgments, easier diagnosis approaches are imminently needed. In this paper, we propose a novel CAD method to distinguish the benign and malignant lung cancer from CT images directly, which can not only improve the efficiency of rumor diagnosis but also greatly decrease the pain and risk of patients in biopsy collecting process. Briefly, according to the state-of-the-art radiomics approach, 583 features were used at the first step for measurement of nodules' intensity, shape, heterogeneity and information in multi-frequencies. Further, with Random Forest method, we distinguish the benign nodules from malignant nodules by analyzing all these features. Notably, our proposed scheme was tested on all 79 CT scans with diagnosis data available in The Cancer Imaging Archive (TCIA) which contain 127 nodules and each nodule is annotated by at least one of four radiologists participating in the project. Satisfactorily, this method achieved 82.7% accuracy in classification of malignant primary lung nodules and benign nodules. We believe it would bring much value for routine lung cancer diagnosis in CT imaging and provide improvement in decision-support with much lower cost.
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放射组学方法的肺结节自动分类
肺癌是癌症死亡的第一大杀手。肺恶性结节病死率极高,而部分良性结节无需治疗,因此良恶性结节诊断的准确性是很有必要的。值得注意的是,虽然目前额外的侵入性活检或3个月后的第二次CT扫描可以帮助放射科医生做出判断,但迫切需要更容易的诊断方法。在本文中,我们提出了一种新的CAD方法来直接从CT图像中区分肺癌的良恶性,不仅可以提高诊断效率,而且可以大大降低患者在活检过程中的痛苦和风险。简而言之,根据最先进的放射组学方法,在第一步使用583个特征来测量结节的强度、形状、异质性和多频率信息。在此基础上,利用随机森林方法,通过对这些特征的分析,将良性结节与恶性结节区分开来。值得注意的是,我们提出的方案在所有79个CT扫描上进行了测试,这些扫描包含127个结节,每个结节都由参与该项目的四名放射科医生中的至少一名进行了注释。该方法对肺原发性恶性结节和良性结节的分类准确率达到82.7%。我们相信它将为肺癌的常规CT诊断带来更大的价值,并以更低的成本为决策支持提供改进。
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