不同分类器从CT图像中识别活性骨髓的比较

S. Rosati, P. Franco, C. Fiandra, F. Arcadipane, P. Silvetti, E. Gallio, J. Panić, U. Ricardi, G. Balestra
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引用次数: 1

摘要

化疗和放疗治疗肛门癌的主要问题之一是血液毒性(HT)的发生。特别是,在放射治疗期间,保留骨髓(BM)是至关重要的,因为骨盆骨BM接受的辐射剂量可以预测HT的发生。在这个方向上,最流行的策略是基于识别造血活性BM (actBM),即BM中负责血细胞生成的部分,使用MRI, SPECT或PET,但尚未提出基于CT的方法。在这项研究中,我们比较了四种不同的分类器在使用36个放射学特征识别CT图像中的actBM。我们使用遗传算法(GAs)同时优化特征子集和分类器参数,分别针对三个骨盆亚区:髂骨髓(IBM)、骨盆下部骨髓(LPBM)和腰骶骨髓(LSBM)。将获得的分类器应用于25例肛管癌患者的CT序列。将分类器的结果与从18FDG-PET(参考标准,RS)中鉴定的actBM进行比较。结果表明,4种分类器的性能相似,在IBM和LSBM子区域(Dice > 0.7)上表现令人满意,而在LPBM子区域(Dice < 0.5)上表现较差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of different classifiers to recognize active bone marrow from CT images
One of the main problems during in the treatment of anal cancer with chemotherapy and radiation is the occurrence of Hematologic Toxicity (HT). In particular, during radiotherapy it is crucial to spare Bone Marrow (BM), since the radiation dose received by BM in pelvic bones predicts the onset of HT. In this direction, the most popular strategies are based on the identification of the hematopoietically active BM (actBM), that is the part of BM in charge of blood cells generation, using MRI, SPECT or PET, but no approached have been proposed based on CT. In this study we compare four different classifiers in recognizing actBM from CT images using 36 radiomic features. We used Genetic Algorithms (GAs) to simultaneously optimize the feature subsets and the classifier parameters, separately for three pelvic subregions: iliac bone marrow (IBM), lower pelvis bone marrow (LPBM), and lumbosacral bone marrow (LSBM). The obtained classifiers were applied to CT sequences of a cohort of 25 patients affected by carcinoma of the anal canal. Classifiers results were compared with the actBM identified from 18FDG-PET (reference standard, RS). It emerged that the performances of the 4 classifiers are similar and they are satisfactory for IBM and LSBM subregions (Dice > 0.7) whereas they are poor for LPBM (Dice < 0.5).
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