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Precision Diagnosis Of Melanoma And Other Skin Lesions From Digital Images

机译:从数字图像精确诊断黑色素瘤和其他皮肤病变

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摘要

Melanoma will affect an estimated 73,000 new cases this year and result in 9,000 deaths, yet precise diagnosis remains a serious problem. Without early detection and preventative care, melanoma can quickly spread to become fatal (Stage IV 5-year survival rate is 20-10%) from a once localized skin lesion (Stage IA 5- year survival rate is 97%). There is no biomarker for melanoma in clinical use, and the current diagnostic criteria for skin lesions remains subjective and imprecise. Accurate diagnosis of melanoma relies on a histopathologic gold standard; thus, aggressive excision of melanocytic skin lesions has been the mainstay of treatment. It is estimated that 36 biopsies are performed for every melanoma confirmed by pathology among excised lesions. There is significant morbidity in misdiagnosing melanoma such as progression of the disease for a false negative prediction vs the risks of unnecessary surgery for a false positive prediction. Every year, poor diagnostic precision adds an estimated $673 million in overall cost to manage the disease.Currently, manual dermatoscopic imaging is the standard of care in selecting atypical skin lesions for biopsy, and at best it achieves 90% sensitivity but only 59% specificity when performed by an expert dermatologist. Many computer vision (CV) algorithms perform better than dermatologists in classifying skin lesions although not significantly so in clinical practice. Meanwhile, open source deep learning (DL) techniques in CV have been gaining dominance since 2012 for image classification, and today DL can outperform humans in classifying millions of digital images with less than 5% error rates. Moreover, DL algorithms are readily run on commoditized hardware and have a strong online community of developers supporting their rapid adoption. In this work, we performed a successful pilot study to show proof of concept to DL skin pathology from images.However, DL algorithms must be trained on very large labelled datasets of images to achieve high accuracy. Here, we begin to assemble a large imageset of skin lesions from the UCSF and the San Francisco Veterans Affairs Medical Center (VAMC) dermatology clinics that are well characterized by their underlying pathology, on which to train DL algorithms. If trained on sufficient data, we hypothesize that our approach will significantly outperform general dermatologists in predicting skin lesion pathology. We posit that our work will allow for precision diagnosis of melanoma from widely available digital photography, which may optimize the management of the disease by decreasing unnecessary office visits and the significant morbidity and cost of melanoma misdiagnosis.
机译:黑色素瘤今年将影响大约73,000例新病例,并导致9,000人死亡,但准确的诊断仍然是一个严重的问题。如果不及早发现和进行预防护理,黑色素瘤会迅速扩散,一旦发生局部皮肤病变(IA期5年生存率为97%),就会致命(IV期5年生存率为20-10%)。临床上没有用于黑色素瘤的生物标志物,并且当前皮肤损伤的诊断标准仍然是主观和不精确的。黑色素瘤的准确诊断取决于组织病理学的金标准。因此,积极切除黑素细胞性皮肤病变已成为治疗的主要手段。据估计,经切除的病变中经病理证实的每个黑色素瘤均需进行36次活检。误诊黑色素瘤的发病率很高,例如假阴性预测的疾病进展与假阳性预测的不必要手术风险。每年诊断精度低下会增加大约6.73亿美元的总管理成本,目前,手动皮肤镜成像是选择非典型皮肤病变进行活检的护理标准,充其量只能达到90%的敏感性但只有59%的特异性由专业的皮肤科医生进行。尽管在临床实践中,许多计算机视觉(CV)算法在对皮肤病变进行分类方面的性能优于皮肤科医生。同时,自2012年以来,CV中的开源深度学习(DL)技术在图像分类中一直占据主导地位,如今,在对数百万个数字图像进行错误率低于5%的数字图像分类时,DL可以超越人类。此外,DL算法很容易在商品化硬件上运行,并且拥有强大的在线开发人员社区来支持其快速采用。在这项工作中,我们进行了成功的试点研究,以从图像中证明DL皮肤病理学的概念证明,但是必须在非常大的带标签图像数据集上训练DL算法才能实现高精度。在这里,我们开始从UCSF和旧金山退伍军人事务医疗中心(VAMC)皮肤病学诊所收集皮肤病变的大型图像集,这些图像集以其潜在病理学为特征,并在其上训练DL算法。如果接受足够的数据训练,我们假设我们的方法在预测皮肤病变病理学方面将明显优于一般皮肤科医生。我们认为,我们的工作将可以通过广泛使用的数码照片对黑素瘤进行精确诊断,这可以通过减少不必要的上门拜访以及黑素瘤误诊的高发病率和高成本来优化疾病的管理。

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