Abstract

Skin cancer is currently the most common type of cancer among Caucasians. The increase in life expectancy, along with new diagnostic tools and treatments for skin cancer, has resulted in unprecedented changes in patient care and has generated a great burden on healthcare systems. Early detection of skin tumors is expected to reduce this burden. Artificial intelligence (AI) algorithms that support skin cancer diagnoses have been shown to perform at least as well as dermatologists’ diagnoses. Recognizing the need for clinically and economically efficient means of diagnosing skin cancers at early stages in the primary care attention, we developed an efficient computer-aided diagnosis (CAD) system to be used by primary care physicians (PCP). Additionally, we developed a smartphone application with a protocol for data acquisition (i.e., photographs, demographic data and short clinical histories) and AI algorithms for clinical and dermoscopic image classification. For each lesion analyzed, a report is generated, showing the image of the suspected lesion and its respective Heat Map; the predicted probability of the suspected lesion being melanoma or malignant; the probable diagnosis based on that probability; and a suggestion on how the lesion should be managed. The accuracy of the dermoscopy model for melanoma was 89.3%, and for the clinical model, 84.7% with 0.91 and 0.89 sensitivity and 0.89 and 0.83 specificity, respectively. Both models achieved an area under the curve (AUC) above 0.9. Our CAD system can screen skin cancers to guide lesion management by PCPs, especially in the contexts where the access to the dermatologist can be difficult or time consuming. Its use can enable risk stratification of lesions and/or patients and dramatically improve timely access to specialist care for those requiring urgent attention.

Highlights

  • Skin cancer is currently the most common type of cancer among Caucasians [1]

  • Our informal survey with primary care physicians (PCP) showed that our typical subject is: male (57%), 31 years of age, single, with no children, Brazilian, 7 years since graduation, Family Doctor, working in São Paulo city, 40 hours/week, assisting a mean of 431 patients/month, who does not work anywhere else, has been working in primary care for more than 3 years, but with no intention to stay in primary care for the 5 years; believes that electronic medical records and Artificial intelligence (AI) would facilitate their work, and his motivation to work in primary care is to have a closer doctorpatient relationship (S1 File)

  • We developed algorithms for both clinical and dermoscopic images to be used as a cancer screening tool for PCPs with the intention to guide lesion management

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Summary

Introduction

Skin cancer is currently the most common type of cancer among Caucasians [1]. 1 in 5 Americans will develop skin cancer at some point in their lives [2]. A continuous increase in skin cancer rates is being observed [1, 3]. Implementation of artificial intelligence algorithms for melanoma screening in a primary care setting common type, with a relative incidence increase of up to 10% per year, with 2–3 million new cases each year worldwide [4]. Among KCs, basal cell carcinoma (BCC) and cutaneous squamous cell carcinoma (cSCC) are the most frequent types [5]. Less frequent, is responsible for more than 95% of the deaths by skin cancer [6]

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