A Portable Non-Invasive Electromagnetic Lesion-Optimized Sensing Device for the Diagnosis of Skin Cancer (SkanMD)

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Institute of Electrical and Electronics Engineers Inc.

Abstract

The article presented herein proposes an alternative skin cancer screening method that delivers non-invasive diagnosis and monitoring of skin lesions by leveraging electromagnetic waves with radio frequency technology and circuits. The proposed handheld device, named SkanMD, comprises a sensitive electromagnetic sensor, customized radio frequency wave analyzer circuits, and machine learning algorithms. The device is used in clinical studies that are performed on a total of 46 individuals that are composed of 18 patients with pre-diagnosed skin cancer, 10 individuals with benign nevi, 7 patients with arbitrary diseases, and 11 healthy individuals. These studies included the measurement of the reflection coefficient, S11, on multiple skin regions and recording the obtained complex values to build a Support Vector Machine (SVM)-based classification model. Due to the lesion-optimized sensor and the unified cross-patient classifier, our results differentiate between cancerous and non-cancerous skin lesions with a sensitivity that exceeds 92% and a specificity that exceeds 81.4%. These reported results are based on a limited population size study. They also demonstrate that SkanMD is a promising solution that could augment conventional diagnosis methods to greatly improve patient comfort and enable instantaneous and accurate diagnosis. © 2007-2012 IEEE.

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Electromagnetic sensor, Machine learning, Non-invasive, Skin cancer, Wave analyzer, Algorithms, Electromagnetic phenomena, Humans, Skin, Skin neoplasms, Support vector machine, Dermatology, Diagnosis, Image processing, Learning algorithms, Population statistics, Radio waves, Support vector machines, Electromagnetic sensors, Electromagnetics, Lesion, Machine-learning, Sensing devices, Skin cancers, Skin lesion, Algorithm, Electromagnetism, Human, Pathology, Skin tumor, Diseases

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