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2 . 2024

Modern methods for detecting malignant skin tumors, including the use of mobile applications and artificial intelligence: literature review

Abstract

The article analyzes the effectiveness of existing methods for detecting cancer, including the use of mobile applications and artificial intelligence (hereinafter referred to as AI) for identifying malignant skin tumors in countries around the world. An overview of such visual methods as ABCDE, the Ugly duckling sign, the Glasgow system, the use of dermatoscopy, ultrasound diagnostics, reflectance confocal microscopy, and total-body photography is presented. The review also presents and evaluates the effectiveness of AI-based methods for automatic image analysis. The use of AI methods in telemedicine and on mobile platforms in the form of mobile applications opens up new prospects in the early detection of cancer. The article presents examples of mobile applications with various operating algorithms, both for self-diagnosis (Skin Self-Exam, SSE) and for use by specialists.

The purpose of this review is to search in reliable scientific databases for articles on the effectiveness of modern methods for detecting cancer, including the use of mobile applications and artificial intelligence.

Research methods. To search for literature sources, the databases PubMed (Medline), CyberLeninka, and RSCI among English-language and Russian-language publications were used. The study used thematic and semantic methodology for obtaining information. Keyword queries were entered into the search bar: skin, skin malignancies, melanoma, basal cell skin cancer, mobile applications, telemedicine technologies. At the first stage, 1304 articles on the topic of modern diagnostic methods were found, from the received articles the following categories were identified: visual methods, instrumental and methods using information technology, at the second stage queries were entered into these groups, 646 articles were received, duplicates were excluded, description of clinical cases. The review presents 42 articles on methods for diagnosing cancer.

Results and discussion. After searching reliable scientific databases for articles on the effectiveness of modern methods for detecting cancer, including the use of mobile applications and artificial intelligence, the sensitivity of the methods was compared. Despite the advantage of relative ease of use, visual methods show low sensitivity and specificity. Among the achievements of recent years, one can note the use of AI-based tools. Studies based on the analysis of NK images show high sensitivity and specificity. The results obtained may inspire some optimism, but so far the use of such technologies in clinical practice is relatively rare.

The use of mobile applications, both using neural networks and applications for self-diagnosis, is still at the stage of searching for the most effective approaches, despite the fact that in some countries regulatory authorities have approved the use of such solutions in clinical practice, there is a small number of high-quality studies on the effectiveness of these technologies. In certain cases, the use of apps can lead to increased healthcare costs.

Conclusion. Since in recent years there has been an increase in the incidence of cervical cancer, the burden on the healthcare system is increasing, and there is a need to search for and implement new approaches. Along with traditional methods, the search for solutions in the field of using telemedicine technologies, in particular in the form of mobile applications with various algorithms, has wide prospects. Thus, the search and research of effective methods for detecting malignant tumors is becoming one of the most promising tasks for researchers at the intersection of various scientific disciplines and fields of knowledge.

Keywords:skin; malignant neoplasms of the skin; melanoma; basal cell skin cancer; mobile applications; telemedicine technologies

Funding. The study had no sponsor support.

Conflict of interest. The authors declare no conflict of interest.

Contribution. Conducting research, preparing and editing the text, approving the final version of the article – Sivodedova N.A.; concept development, editing, approval of the final version of the article – Karyakin N.N., Shlivko I.L.

For citation: Sivоdedova N.A., Karyakin N.N., Shlivko I.L. Modern methods for detecting malignant skin tumors, including the use of mobile applications and artificial intelligence (not a systematic literature review). ORGZDRAV: novosti, mneniya, obuchenie. Vestnik VSHOUZ [HEALTHCARE MANAGEMENT: News, Views, Education. Bulletin of VSHOUZ]. 2024; 10 (2): 78–93. DOI: https://doi.org/10.33029/2411-8621-2024-10-2-78-93 (in Russian)

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CHIEF EDITOR
CHIEF EDITOR
Guzel E. Ulumbekova
MD, MBA from Harvard University (Boston, USA), Head of the Graduate School of Healthcare Organization and Management (VSHOUZ)

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