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从皮肤镜图像中进行肿瘤提取的定量评估以及用于自动黑色素瘤诊断系统的基于计算机的提取方法的评估。

Quantitative assessment of tumour extraction from dermoscopy images and evaluation of computer-based extraction methods for an automatic melanoma diagnostic system.

作者信息

Iyatomi Hitoshi, Oka Hiroshi, Saito Masataka, Miyake Ayako, Kimoto Masayuki, Yamagami Jun, Kobayashi Seiichiro, Tanikawa Akiko, Hagiwara Masafumi, Ogawa Koichi, Argenziano Giuseppe, Soyer H Peter, Tanaka Masaru

机构信息

Department of Dermatology, School of Medicine, Keio University, Tokyo, Japan.

出版信息

Melanoma Res. 2006 Apr;16(2):183-90. doi: 10.1097/01.cmr.0000215041.76553.58.

Abstract

The aims of this study were to provide a quantitative assessment of the tumour area extracted by dermatologists and to evaluate computer-based methods from dermoscopy images for refining a computer-based melanoma diagnostic system. Dermoscopic images of 188 Clark naevi, 56 Reed naevi and 75 melanomas were examined. Five dermatologists manually drew the border of each lesion with a tablet computer. The inter-observer variability was evaluated and the standard tumour area (STA) for each dermoscopy image was defined. Manual extractions by 10 non-medical individuals and by two computer-based methods were evaluated with STA-based assessment criteria: precision and recall. Our new computer-based method introduced the region-growing approach in order to yield results close to those obtained by dermatologists. The effectiveness of our extraction method with regard to diagnostic accuracy was evaluated. Two linear classifiers were built using the results of conventional and new computer-based tumour area extraction methods. The final diagnostic accuracy was evaluated by drawing the receiver operating curve (ROC) of each classifier, and the area under each ROC was evaluated. The standard deviations of the tumour area extracted by five dermatologists and 10 non-medical individuals were 8.9% and 10.7%, respectively. After assessment of the extraction results by dermatologists, the STA was defined as the area that was selected by more than two dermatologists. Dermatologists selected the melanoma area with statistically smaller divergence than that of Clark naevus or Reed naevus (P = 0.05). By contrast, non-medical individuals did not show this difference. Our new computer-based extraction algorithm showed superior performance (precision, 94.1%; recall, 95.3%) to the conventional thresholding method (precision, 99.5%; recall, 87.6%). These results indicate that our new algorithm extracted a tumour area close to that obtained by dermatologists and, in particular, the border part of the tumour was adequately extracted. With this refinement, the area under the ROC increased from 0.795 to 0.875 and the diagnostic accuracy showed an increase of approximately 20% in specificity when the sensitivity was 80%. It can be concluded that our computer-based tumour extraction algorithm extracted almost the same area as that obtained by dermatologists and provided improved computer-based diagnostic accuracy.

摘要

本研究的目的是对皮肤科医生提取的肿瘤面积进行定量评估,并评估基于计算机的皮肤镜图像方法,以完善基于计算机的黑色素瘤诊断系统。研究检查了188例克拉克痣、56例里德痣和75例黑色素瘤的皮肤镜图像。五位皮肤科医生使用平板电脑手动绘制每个病变的边界。评估了观察者间的变异性,并定义了每张皮肤镜图像的标准肿瘤面积(STA)。采用基于STA的评估标准(精度和召回率)对10名非医学人员的手动提取结果和两种基于计算机的方法进行了评估。我们新的基于计算机的方法引入了区域生长方法,以获得接近皮肤科医生提取的结果。评估了我们的提取方法在诊断准确性方面的有效性。使用传统和新的基于计算机的肿瘤面积提取方法的结果构建了两个线性分类器。通过绘制每个分类器的受试者工作特征曲线(ROC)来评估最终诊断准确性,并评估每个ROC曲线下的面积。五位皮肤科医生和10名非医学人员提取的肿瘤面积的标准差分别为8.9%和10.7%。在皮肤科医生评估提取结果后,STA被定义为被两名以上皮肤科医生选择的面积。皮肤科医生选择的黑色素瘤面积的差异在统计学上小于克拉克痣或里德痣(P = 0.05)。相比之下,非医学人员没有表现出这种差异。我们新的基于计算机的提取算法表现出优于传统阈值方法的性能(精度为94.1%;召回率为95.3%)(精度为99.5%;召回率为87.6%)。这些结果表明,我们的新算法提取的肿瘤面积接近皮肤科医生提取的面积,特别是肿瘤的边界部分被充分提取。通过这种改进,当灵敏度为80%时,ROC曲线下的面积从0.795增加到0.875,诊断准确性的特异性提高了约20%。可以得出结论,我们基于计算机的肿瘤提取算法提取的面积与皮肤科医生提取的面积几乎相同,并提高了基于计算机的诊断准确性。

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