首页> 外文会议>Conference on Medical Imaging 2008: Computer-Aided Diagnosis; 20080219-21; San Diego,CA(US) >An MTANN CAD for Detection of Polyps in False-Negative CT Colonography Cases in a Large Multicenter Clinical Trial: Preliminary Results
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An MTANN CAD for Detection of Polyps in False-Negative CT Colonography Cases in a Large Multicenter Clinical Trial: Preliminary Results

机译:MTANN CAD在大型多中心临床试验中在假阴性CT结肠造影病例中检测息肉的初步结果

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A major challenge in computer-aided detection (CAD) of polyps in CT colonography (CTC) is the detection of "difficult" polyps which radiologists are likely to miss. Our purpose was to develop a CAD scheme incorporating massive-training artificial neural networks (MTANNs) and to evaluate its performance on false-negative (FN) cases in a large multicenter clinical trial. We developed an initial polyp-detection scheme consisting of colon segmentation based on CT value-based analysis, detection of polyp candidates based on morphologic analysis, and quadratic discriminant analysis based on 3D pattern features for classification. For reduction of false-positive (FP) detections, we developed multiple expert 3D MTANNs designed to differentiate between polyps and seven types of non-polyps. Our independent database was obtained from CTC scans of 155 patients with polyps from a multicenter trial in which 15 medical institutions participated nationwide. Among them, about 45% patients received FN interpretations in CTC. For testing our CAD, 14 cases with 14 polyps/masses were randomly selected from the FN cases. Lesion sizes ranged from 6-35 mm, with an average of 10 mm. The initial CAD scheme detected 71.4% (10/14) of "missed" polyps, including sessile polyps and polyps on folds, with 18.9 (264/14) FPs per case. The MTANNs removed 75% (197/264) of the FPs without loss of any true positives; thus, the performance of our CAD scheme was improved to 4.8 (67/14) FPs per case. With our CAD scheme incorporating MTANNs, 71.4% of polyps "missed" by radiologists in the trial were detected correctly, with a reasonable number of FPs.
机译:CT结肠造影(CTC)中息肉的计算机辅助检测(CAD)的主要挑战是放射科医生可能会错过的“难”息肉的检测。我们的目的是开发一个包含大规模训练人工神经网络(MTANN)的CAD方案,并在大型多中心临床试验中评估其在假阴性(FN)病例上的表现。我们开发了一种初始的息肉检测方案,包括基于CT值的分析进行结肠分割,基于形态分析的息肉候选物检测以及基于3D模式特征的二次判别分析进行分类。为了减少假阳性(FP)的检测,我们开发了多个专家3D MTANN,旨在区分息肉和七种非息肉。我们的独立数据库是从一项多中心试验对155例息肉患者的CTC扫描中获得的,该试验在全国15家医疗机构参加。其中,约45%的患者在CTC中接受了FN解释。为了测试我们的CAD,从FN病例中随机选择14例息肉/肿块14例。病变大小范围为6-35 mm,平均为10 mm。最初的CAD方案检测到71.4%(10/14)的“遗漏”息肉,包括无蒂息肉和褶皱息肉,每例有18.9(264/14)个FP。 MTANN删除了75%(197/264)的FP,而没有损失任何真实的阳性值。因此,我们的CAD方案的性能提高到每个案例4.8(67/14)个FP。通过我们的包含MTANN的CAD方案,可以正确检测到放射线医师在试验中“遗漏”的息肉的71.4%,并使用了合理数量的FP。

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