Wallace V P, Bamber J C, Crawford D C, Ott R J, Mortimer P S
Department of Physics, Institute of Cancer Research and Royal Marsden NHS Trust, Sutton, Surrey, UK.
Phys Med Biol. 2000 Oct;45(10):2859-71. doi: 10.1088/0031-9155/45/10/309.
Successful treatment of skin cancer, especially melanoma, depends on early detection, but diagnostic accuracy, even by experts, can be as low as 56% so there is an urgent need for a simple, accurate, non-invasive diagnostic tool. In this paper we have compared the performance of an artificial neural network (ANN) and multivariate discriminant analysis (MDA) for the classification of optical reflectance spectra (320 to 1100 nm) from malignant melanoma and benign naevi. The ANN was significantly better than MDA, especially when a larger data set was used, where the classification accuracy was 86.7% for ANN and 72.0% for MDA (p < 0.001). ANN was better at learning new cases than MDA for this particular classification task. This study has confirmed that the convenience of ANNs could lead to the medical community and patients benefiting from the improved diagnostic performance which can be achieved by objective measurement of pigmented skin lesions using spectrophotometry.
皮肤癌,尤其是黑色素瘤的成功治疗取决于早期发现,但即使是专家进行诊断,准确率也可能低至56%,因此迫切需要一种简单、准确、非侵入性的诊断工具。在本文中,我们比较了人工神经网络(ANN)和多变量判别分析(MDA)对恶性黑色素瘤和良性痣的光学反射光谱(320至1100纳米)进行分类的性能。ANN明显优于MDA,尤其是在使用更大数据集时,ANN的分类准确率为86.7%,MDA为72.0%(p < 0.001)。对于此特定分类任务,ANN在学习新病例方面比MDA表现更好。这项研究证实,ANN的便利性可使医学界和患者受益于通过使用分光光度法对色素沉着性皮肤病变进行客观测量而实现的诊断性能提升。