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基于光学相干断层扫描获得的图像特征对非黑色素瘤皮肤癌进行机器学习分类。

Machine-learning classification of non-melanoma skin cancers from image features obtained by optical coherence tomography.

作者信息

Jørgensen Thomas Martini, Tycho Andreas, Mogensen Mette, Bjerring Peter, Jemec Gregor B E

机构信息

Department of Photonics Engineering, Technical University of Denmark, Roskilde, Denmark.

出版信息

Skin Res Technol. 2008 Aug;14(3):364-9. doi: 10.1111/j.1600-0846.2008.00304.x.

DOI:10.1111/j.1600-0846.2008.00304.x
PMID:19159385
Abstract

BACKGROUND/PURPOSE: A number of publications have suggested that optical coherence tomography (OCT) has the potential for non-invasive diagnosis of skin cancer. Currently, individual diagnostic features do not appear sufficiently discriminatory. The combined use of several features may however be useful.

METHODS

OCT is based on infrared light, photonics and fibre optics. The system used has an axial resolution of 10 mum, lateral 20 mum. We investigated the combined use of several OCT features from basal cell carcinomas (BCC) and actinic keratosis (AK). We studied BCC (41) and AK (37) lesions in 34 consecutive patients. The diagnostic accuracy of the combined features was assessed using a machine-learning tool.

RESULTS

OCT images of normal skin typically exhibit a layered structure, not present in the lesions imaged. BCCs showed dark globules corresponding to basaloid islands and AKs showed white dots and streaks corresponding to hyperkeratosis. Differences in OCT morphology were not sufficient to differentiate BCC from AK by the naked eye. Machine-learning analysis suggests that when a multiplicity of features is used, correct classification accuracies of 73% (AK) and 81% (BCC) are achieved.

CONCLUSION

The data extracted from individual OCT scans included both quantitative and qualitative measures, and at the current level of resolution, these single factors appear insufficient for diagnosis. Our approach suggests that it may be possible to extract diagnostic data from the overall architecture of the OCT images with a reasonable diagnostic accuracy when used in combination.

摘要

背景/目的:许多出版物表明,光学相干断层扫描(OCT)具有非侵入性诊断皮肤癌的潜力。目前,单个诊断特征似乎没有足够的鉴别力。然而,联合使用多个特征可能会有帮助。

方法

OCT基于红外光、光子学和光纤。所使用的系统轴向分辨率为10微米,横向分辨率为20微米。我们研究了来自基底细胞癌(BCC)和光化性角化病(AK)的多个OCT特征的联合使用。我们对34例连续患者的41个BCC病变和37个AK病变进行了研究。使用机器学习工具评估联合特征的诊断准确性。

结果

正常皮肤的OCT图像通常呈现分层结构,而在成像病变中不存在。BCC显示对应于基底样岛的暗球,AK显示对应于角化过度的白点和条纹。OCT形态的差异不足以通过肉眼区分BCC和AK。机器学习分析表明,当使用多个特征时,AK的正确分类准确率为73%,BCC为81%。

结论

从单个OCT扫描中提取的数据包括定量和定性测量,在当前分辨率水平下,这些单一因素似乎不足以用于诊断。我们的方法表明,联合使用时,从OCT图像的整体结构中提取诊断数据并达到合理的诊断准确率是可能的。

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