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Design of a decision support system, trained on GPU, for assisting melanoma diagnosis in dermatoscopy images

机译:设计支持系统的设计,在GPU上培训,用于辅助黑色素瘤诊断皮肤镜图像

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The purpose of this study was to design a decision support system for assisting the diagnosis of melanoma in dermatoscopy images. Clinical material comprised images of 44 dysplastic (clark's nevi) and 44 malignant melanoma lesions, obtained from the dermatology database Dermnet. Initially, images were processed for hair removal and background correction using the Dull Razor algorithm. Processed images were segmented to isolate moles from surrounding background, using a combination of level sets and an automated thresholding approach. Morphological (area, size, shape) and textural features (first and second order) were calculated from each one of the segmented moles. Extracted features were fed to a pattern recognition system assembled with the Probabilistic Neural Network Classifier, which was trained to distinguish between benign and malignant cases, using the exhaustive search and the leave one out method. The system was designed on the GPU card (GeForce 580GTX) using CUDA programming framework and C++ programming language. Results showed that the designed system discriminated benign from malignant moles with 88.6 % accuracy employing morphological and textural features. The proposed system could be used for analysing moles depicted on smart phone images after appropriate training with smartphone images cases. This could assist towards early detection of melanoma cases, if suspicious moles were to be captured on smartphone by patients and be transferred to the physician together with an assessment of the mole's nature.
机译:本研究的目的是设计一个决策支持系统,以协助皮肤病图像中黑色素瘤的诊断。临床材料包括从皮肤科数据库Dermnet获得的44个功能性(Clark Nevi)和44个恶性黑色素瘤病变的图像。最初,使用沉闷的剃刀算法处理图像以进行脱发和背景校正。通过水平集和自动阈值接近的组合和自动阈值处理方法分割处理图像以分割以隔离摩尔数。根据每个分段摩尔计算形态(区域,大小,形状)和纹理特征(第一和二阶)。提取的特征被馈送到与概率神经网络分类器组装的图案识别系统,该分类器被训练以区分良性和恶性案例,使用详尽的搜索和留给一个OUT方法。该系统采用CUDA编程框架和C ++编程语言设计在GPU卡(GeForce 580GTX)上设计。结果表明,设计的系统在恶性痣中歧视良性痣,精度为88.6%,采用形态学和纹理特征。在适当的智能手机图像壳体之后,所提出的系统可用于分析智能手机图像上描绘的摩尔。这可以有助于早期发现黑素瘤病例,如果患者将在智能手机上捕获可疑痣,并随着鼹鼠性质的评估而转移到医生。

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