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Differential Diagnosis of Parotid Gland Lesions using Spatially Fused Sonohistologic Features

机译:空间融合SONOHISTOGIC特征鉴别诊断腮腺病变

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In an ongoing clinical study a sonohistology system is developed and evaluated towards its ability to perform computerized differential diagnosis of parotid gland lesions. First order statistics are used to calculate fused features from spatially resolved parameter images. Thereby, characteristics of patterns representing the type of lesion are quantified. Complex baseband ultrasound data have been acquired during the common examinations of patients who were scheduled to have parotid surgery shortly after the acquisition. Data of benign and malignant parotid-gland alterations originating from 135 patients have been included in the study. For data acquisition, a conventional diagnostic ultrasound scanner controlled by custom software running on a laptop computer was used. Lesions were manually contoured in the B-mode images. Acquired data were stored on an external PC. Fused features were calculated offline. From a large number of fused features, a best performing subset is chosen by a selection algorithm to form a feature vector representing each case. The best feature set was used to classify each case using leave-one-out cross validation. Two different classifiers have been used for comparative reasons: a probabilistic neural network based on radial basis functions, and a maximum likelihood classifier, yielding areas under the ROC-curve of 0.85 and 0.91 with standard errors of 0.04 and 0.03, respectively. The system can be adjusted to reach a sensitivity of 1 to catch all positive cases, leaving a remaining maximal specificity of 0.55. Therefore, the system can be used to optimize treatments of parotid gland lesions and to reduce the number of unnecessary surgical interventions.
机译:在正在进行的临床研究中,开发并评估Sonohistology系统,以促进其对腮腺病变的计算机化鉴别诊断的能力。第一阶统计信息用于从空间解析的参数图像计算融合功能。由此,量化表示病变类型的图案的特征。复杂的基带超声数据在常见的患者的常见考试期间获得,该患者在收购后不久患有腮腺手术。研究中源自135名患者的良性和恶性腮腺改变的数据已被列入该研究。对于数据采集,使用了通过在膝上型计算机上运行的自定义软件控制的传统诊断超声扫描仪。病变在B模式图像中手动轮廓。获取的数据存储在外部PC上。融合功能是离线计算的。根据大量融合特征,通过选择算法选择最佳执行子集以形成表示每种情况的特征向量。最佳功能集用于对每个案例进行分类,使用休假交叉验证。两种不同的分类器已被用于比较原因:基于径向基函数的概率神经网络,以及最大似然分类器,屈服于0.85和0.91的ROC曲线下的区域,标准误差分别为0.04和0.03。可以调整系统以达到1的灵敏度,以捕获所有阳性情况,留下剩余的最大特异性为0.55。因此,该系统可用于优化腮腺病变的处理,并减少不必要的外科干预的数量。

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