基于FPGA的物联网便携式超声成像系统肾脏初步CAD

Konda Divya Krishna, V. Akkala, R. Bharath, P. Rajalakshmi, M. Mateen
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引用次数: 20

摘要

超声成像因其无创性和对多种疾病的分析范围广而被广泛应用于初步诊断。缺乏训练有素的超声检查人员使得超声成像诊断费时,难以发现任何异常。有时问题不能准确地识别,这可能导致诊断错误。因此,在本文中,我们提出了计算机辅助自动检测肾脏异常的超声系统本身,以减少报告的时间,而不是依赖于超声医师。我们将肾脏分为正常和异常两类。对肾脏区域进行分割,从灰度共并发矩阵(GLCM)中提取灰度直方图特征和哈拉利克特征。这些特征是针对包含正常和异常情况的一组大数据计算的。异常情况包括肾结石、囊肿和细菌感染。观察各参数的标准差,只考虑偏差较小的特征,并在FPGA Kintex板上实现。如果平均值为1.08 ~ 1.336,偏度为2.882 ~ 7.708,峰度为1.06 ~ 71.152,聚类阴影为72 ~ 243,均匀性为0.993 ~ 0.998,则观察到的肾脏图像正常,否则异常。
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FPGA based preliminary CAD for kidney on IoT enabled portable ultrasound imaging system
Ultrasound imaging has been widely used for preliminary diagnosis as it is non-invasive and has good scope for the doctors to analyze many diseases. Lack of trained sonographers make ultrasound imaging diagnosis time consuming to detect any abnormality. Sometimes the problem cannot exactly be identified which may lead to error in diagnosis. Hence in this paper we present computer aided automatic detection of abnormality in kidney on the ultrasound system itself, to decrease the time for reports and not to depend on the sonographer. We classified the kidney as normal and abnormal case. Segment the kidney region and extract Intensity histogram features and Haralick features from Gray Level Cooccurnace Matrix (GLCM). These features are calculated for a set of large data containing both normal and abnormal cases. Abnormal case includes kidney stone, cyst and bacterial infection. Standard deviation for each parameter is observed, considered only those features with less deviation and implemented on FPGA Kintex board. If the range of mean value is 1.08 to 1.336, skewness is 2.882 to 7.708, Kurtosis is 1.06 to 71.152, Cluster Shade is 72 to 243, Homogeneity is 0.993 to 0.998, the observed kidney image is normal otherwise abnormal.
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