Department of Dermatology, University of Edinburgh, Scotland.
Acta Derm Venereol. 2011 May;91(3):279-83. doi: 10.2340/00015555-1049.
Non-analytical reasoning is thought to play a key role in dermatology diagnosis. Considering its potential importance, surprisingly little work has been done to research whether similar identification processes can be supported in non-experts. We describe here a prototype diagnostic support software, which we have used to examine the ability of medical students (at the beginning and end of a dermatology attachment) and lay volunteers, to diagnose 12 images of common skin lesions. Overall, the non-experts using the software had a diagnostic accuracy of 98% (923/936) compared with 33% for the control group (215/648) (Wilcoxon p < 0.0001). We have demonstrated, within the constraints of a simplified clinical model, that novices' diagnostic scores are significantly increased by the use of a structured image database coupled with matching of index and referent images. The novices achieve this high degree of accuracy without any use of explicit definitions of likeness or rule-based strategies.
非分析推理被认为在皮肤病学诊断中起着关键作用。考虑到其潜在的重要性,令人惊讶的是,很少有研究致力于研究非专业人士是否可以支持类似的识别过程。我们在这里描述了一个原型诊断支持软件,我们使用该软件来检查医学生(在皮肤病学实习的开始和结束时)和非专业志愿者诊断 12 张常见皮肤病变图像的能力。总体而言,使用该软件的非专业人员的诊断准确率为 98%(936/936),而对照组(648/215)的准确率为 33%(Wilcoxon p < 0.0001)。我们已经证明,在简化的临床模型的限制内,新手的诊断分数通过使用结构化的图像数据库以及索引和参考图像的匹配显著提高。新手无需使用相似性的显式定义或基于规则的策略即可达到如此高的准确性。