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首页> 外文期刊>Medical Physics >Content-based image retrieval of multiphase CT images for focal liver lesion characterization
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Content-based image retrieval of multiphase CT images for focal liver lesion characterization

机译:基于内容的Multiphase CT图像图像检索局灶性肝病变特征

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摘要

Purpose: Characterization of focal liver lesions with various imaging modalities can be very challenging in the clinical practice and is experience-dependent. The authors' aim is to develop an automatic method to facilitate the characterization of focal liver lesions (FLLs) using multiphase computed tomography (CT) images by radiologists. Methods: A multiphase-image retrieval system is proposed to retrieve a preconstructed database of FLLs with confirmed diagnoses, which can assist radiologists' decision-making in FLL characterization. It first localizes the FLL on multiphase CT scans using a hybrid generative-discriminative FLL detection method and a nonrigid B-spline registration method. Then, it extracts the multiphase density and texture features to numerically represent the FLL. Next, it compares the query FLL with the model FLLs in the database in terms of the feature and measures their similarities using the L1-norm based similarity scores. The model FLLs are ranked by similarities and the top results are finally provided to the users for their evidence studies. Results: The system was tested on a database of 69 four-phase contrast-enhanced CT scans, consisting of six classes of liver lesions, and evaluated in terms of the precision-recall curve and the Bull's Eye Percentage Score (BEP). It obtained a BEP score of 78%. Compared with any single-phase based representation, the multiphase-based representation increased the BEP scores of the system, from 63%-65% to 78%. In a pilot study, two radiologists performed characterization of FLLs without and with the knowledge of the top five retrieved results. The results were evaluated in terms of the diagnostic accuracy, the receiver operating characteristic (ROC) curve and the mean diagnostic confidence. One radiologist's accuracy improved from 75% to 92%, the area under ROC curves (AUC) from 0.85 to 0.95 (p = 0.081), and the mean diagnostic confidence from 4.6 to 7.3 (p = 0.039). The second radiologist's accuracy did not change, at 75%, with AUC increasing from 0.72 to 0.75 (p = 0.709), and the mean confidence from 4.5 to 4.9 (p = 0.607). Conclusions: Multiphase CT images can be used in content-based image retrieval for FLL's categorization and result in good performance in comparison with single-phase CT images. The proposed method has the potential to improve the radiologists' diagnostic accuracy and confidence by providing visually similar lesions with confirmed diagnoses for their interpretation of clinical studies.
机译:目的:具有各种成像方式的局灶性肝病变的表征在临床实践中可能非常具有挑战性,并且是经验依赖性的。作者的目的是开发一种自动方法,以促进使用辐射科学家的多相计算机断层扫描(CT)图像表征焦肝病变(FLL)。方法:提出了一种多相图像检索系统,以检索具有确认诊断的FLL的预设数据库,可以帮助放射学家在FLL表征中的决策。首先使用混合生成鉴别的FLL检测方法和非脂肪B样条登记方法定位在多相CT扫描上的FLL。然后,提取多相密度和纹理特征以数值表示FLL。接下来,它将查询FLL与数据库中的型号FLL进行比较,以便使用基于L1-NARM的相似性分数来测量它们的相似性。型号FLLS按相似性排名,最终向用户提供最终结果以获取其证据研究。结果:该系统在69个四相对比增强CT扫描的数据库上进行了测试,由六种肝脏病变组成,并根据精密召回曲线和公牛的眼睛百分比分数(BEP)进行评估。它获得了78%的BEP得分。与任何单相的表示相比,基于多相的表示增加了系统的BEP分数,从63%-65%到78%。在试点研究中,两个放射科医生在没有和前五个检索结果的知识的情况下表现了FLLS的表征。结果是在诊断准确性方面进行评估,接收器操作特征(ROC)曲线和平均诊断信心。一种放射科医生的准确性从75%提高到92%,ROC曲线(AUC)下的面积为0.85至0.95(P = 0.081),平均诊断置信度为4.6至7.3(P = 0.039)。第二个放射科医生的准确性在75%下没有改变,AUC从0.72增加到0.75(p = 0.709),平均置信度为4.9(p = 0.607)。结论:多相CT图像可用于基于内容的图像检索,用于FLL分类,并与单相CT图像相比,性能良好。该方法具有提高放射科医师的诊断准确性和信心,通过提供视觉相似的病变,确认诊断他们对临床研究的解释。

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