Towards Accurate Diagnosis of Skin Lesions Using Feedforward Back Propagation Neural Networks.
Simona MoldovanuCristian-Dragos ObrejaKeka C BiswasLuminiţa MoraruPublished in: Diagnostics (Basel, Switzerland) (2021)
In the automatic detection framework, there have been many attempts to develop models for real-time melanoma detection. To effectively discriminate benign and malign skin lesions, this work investigates sixty different architectures of the Feedforward Back Propagation Network (FFBPN), based on shape asymmetry for an optimal structural design that includes both the hidden neuron number and the input data selection. The reason for the choice of shape asymmetry was based on the 5-10% disagreement between dermatologists regarding the efficacy of asymmetry in the diagnosis of malignant melanoma. Asymmetry is quantified based on lesion shape (contour), moment of inertia of the lesion shape and histograms. The FFBPN has a high architecture flexibility, which indicates it as a favorable tool to avoid the over-parameterization of the ANN and, equally, to discard those redundant input datasets that usually result in poor test performance. The FFBPN was tested on four public image datasets containing melanoma, dysplastic nevus and nevus images. Experimental results on multiple benchmark data sets demonstrate that asymmetry A2 is a meaningful feature for skin lesion classification, and FFBPN with 16 neurons in the hidden layer can model the data without compromising prediction accuracy.
Keyphrases
- deep learning
- neural network
- electronic health record
- machine learning
- big data
- soft tissue
- wound healing
- healthcare
- artificial intelligence
- convolutional neural network
- skin cancer
- loop mediated isothermal amplification
- mental health
- rna seq
- spinal cord
- high resolution
- emergency department
- real time pcr
- spinal cord injury
- data analysis
- mass spectrometry
- optical coherence tomography
- adverse drug