首页> 外文会议>Medical Imaging 1996: Image Processing >Computer-aided diagnosis of mammography using an artificial neural network: predicting the invasiveness of breast cancers from image features
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Computer-aided diagnosis of mammography using an artificial neural network: predicting the invasiveness of breast cancers from image features

机译:使用人工神经网络的乳房X线计算机辅助诊断:通过图像特征预测乳腺癌的侵袭性

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Abstract: The study aim is to develop an artificial neural network (ANN) for computer-aided diagnosis of mammography. Using 9 mammographic image features and patient age, the ANN predicted whether breast lesions were benign, invasive malignant, or noninvasive malignant. Given only 97 malignant patients, the 3-layer backpropagation ANN successfully predicted the invasiveness of those breast cancers, performing with Az of 0.88 plus or minus 0.03. To determine more generalized clinical performance, a different ANN was developed using 266 consecutive patients (97 malignant, 169 benign). This ANN predicted whether those patients were benign or noninvasive malignant vs. invasive malignant with Az of 0.86 plus or minus 0.03. This study is unique because it is the first to predict the invasiveness of breast cancers using mammographic features and age. This knowledge, which was previously available only through surgical biopsy, may assist in the planning of surgical procedures for patients with breast lesions, and may help reduce the cost and morbidity associated with unnecessary surgical biopsies. !16
机译:【摘要】研究目的是建立一种用于计算机辅助X线摄影诊断的人工神经网络(ANN)。 ANN使用9幅乳腺X线照片特征和患者年龄,预测乳腺病变是良性,浸润性恶性还是非浸润性恶性。仅针对97位恶性肿瘤患者,三层反向传播ANN成功地预测了这些乳腺癌的侵袭性,Az为0.88(正负0.03)。为了确定更一般的临床表现,使用266例连续患者(97例恶性,169例良性)开发了不同的人工神经网络。该人工神经网络预测那些患者是良性还是非侵入性恶性与侵入性恶性相比,Az为0.86上下0.03。这项研究是独特的,因为它是第一个使用乳房X线照相特征和年龄来预测乳腺癌侵袭性的方法。以前只能通过手术活检获得的这种知识可能有助于规划乳腺病变患者的手术程序,并可能有助于减少与不必要的手术活检相关的成本和发病率。 !16

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