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Computerized Detection and Classification of Lesions on Breast Ultrasound

机译:乳房超声波病变的计算机化检测和分类

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We are developing a computerized method that detects suspicious areas on ultrasound images, and then distinguishes between malignant and benign-type lesions. The computerized scheme identifies potential lesions based on expected lesion shape and margin characteristics. All potential lesions are subsequently classified by a Bayesian neural net based on computer-extracted lesion features. The scheme was trained on a database of 400 cases (757 images) - consisting of complex cysts, benign and malignant lesions - and tested on a comparable database of 458 cases (1740 images) including 578 normal images. We investigated the performances of lesion detection and subsequent classification by a Bayesian neural net for two tasks. The first task was the distinction between actual lesions and false-positive (FP) detections, and the second task the distinction between actual malignant lesions and all detected lesion candidates. In training, the detection and classification method obtained an A_z value of 0.94 in the distinction of false-positive detections from actual lesions, and an A_z of 0.91 was obtained on the testing database. The task of distinguishing malignant lesions from all other detections (false-positives plus all benign type lesions) showed to be more challenging and A_z values of 0.87 and 0.81 were obtained during training and testing, respectively. For the testing database, the combined detection and classification scheme correctly identified lesions in 82% (0.45 FP per image) of all the patients, and in 100% (0.43 FP malignancies per image) of the cancer patients.
机译:我们正在开发一种计算机化方法,可检测超声图像上的可疑区域,然后区分恶性和良性型病变。计算机化方案基于预期的病变形状和边距特性识别潜在的病变。所有潜在的病变随后由基于计算机提取的病变特征的贝叶斯神经网络分类。该方案培训了400例(757张图片)的数据库 - 由复杂的囊肿,良性和恶性病变组成 - 并在458例(1740张图片)的可比数据库上进行测试,包括578正常图像。我们调查了贝叶斯神经网络的病变检测和随后分类的两项任务的性能。第一个任务是实际病变和假阳性(FP)检测之间的区别,第二任务是实际恶性病变与所有检测到的病变候选者之间的区别。在训练中,检测和分类方法在区分来自实际病变的假阳性检测的情况下获得0.94的A_Z值,并且在测试数据库上获得0.91的A_Z。区分恶性病变与所有其他检测(假阳性加上所有良性型病变)的任务显示出更具挑战性,并且分别在训练和测试期间获得了0.87和0.81的A_Z值。对于测试数据库,组合的检测和分类方案在所有患者的82%(每周0.45FP)(每周0.45FP / / /每周0.45FP)中正确鉴定出癌症患者的100%(每次图片0.43fp恶性肿瘤)。

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