Javascript must be enabled to continue!
Identification of Acral Melanoma using Genetic Algorithms Compared with Convolutional Neural Network using Dermoscopic Images
View through CrossRef
Aim: Identification of acral melanoma using genetic algorithm compared with convolutional neural network CNN using dermoscopic images. Materials and Methods: The study was conducted using the genetic algorithm and convolutional neural network algorithm to analyze and compare the acral melanoma detection. The number of samples used is 20, total sample size is 40. Acral melanoma is identified by evaluating the effectiveness with pre-test power of 80% (G-power), α=0.05, confidence interval 95%. Result: The proposed genetic algorithm helps in increasing the higher accuracy compared to convolutional neural networks with improved accuracy of the genetic algorithm algorithm is 96 % and the convolutional neural network algorithm is 95%. The accurate rate is 80 with the data features found in the genetic algorithm algorithm. Precision is different in each algorithm. Conclusion: This study shows a higher accuracy for the genetic algorithm when compared with convolutional neural networks.
Title: Identification of Acral Melanoma using Genetic Algorithms Compared with Convolutional Neural Network using Dermoscopic Images
Description:
Aim: Identification of acral melanoma using genetic algorithm compared with convolutional neural network CNN using dermoscopic images.
Materials and Methods: The study was conducted using the genetic algorithm and convolutional neural network algorithm to analyze and compare the acral melanoma detection.
The number of samples used is 20, total sample size is 40.
Acral melanoma is identified by evaluating the effectiveness with pre-test power of 80% (G-power), α=0.
05, confidence interval 95%.
Result: The proposed genetic algorithm helps in increasing the higher accuracy compared to convolutional neural networks with improved accuracy of the genetic algorithm algorithm is 96 % and the convolutional neural network algorithm is 95%.
The accurate rate is 80 with the data features found in the genetic algorithm algorithm.
Precision is different in each algorithm.
Conclusion: This study shows a higher accuracy for the genetic algorithm when compared with convolutional neural networks.
Related Results
Abstract LB163: Germline pathogenic variants in melanoma patients
Abstract LB163: Germline pathogenic variants in melanoma patients
Abstract
Background: The etiology of melanoma has generally been thought to be exposure to UV radiation (sun and sun tanning lamps). However, the percent of melanoma...
YAP Activation in Promoting Negative Durotaxis and Acral Melanoma Progression
YAP Activation in Promoting Negative Durotaxis and Acral Melanoma Progression
Directed cell migration towards a softer environment is called negative durotaxis. The mechanism and pathological relevance of negative durotaxis in tumor progression still require...
INVESTIGATION OF DERMOSCOPIC PATTERNS IN PITYRIASIS VERSICOLOR LESIONS: A CROSS-SECTIONAL STUDY
INVESTIGATION OF DERMOSCOPIC PATTERNS IN PITYRIASIS VERSICOLOR LESIONS: A CROSS-SECTIONAL STUDY
Background: Pityriasis versicolor (PV) is essentially a clinical diagnosis characterized by hypopigmented or hyperpigmented patches on the skin.
Potassium hydroxide (KOH) preparati...
Divergent pathways of melanoma development: evidence from a Southern European cohort
Divergent pathways of melanoma development: evidence from a Southern European cohort
Nevus counts in the divergent pathway model of melanoma development have been studied mainly in patients in Australia. Our aim was to compare nevus counts and the melanoma subtype ...
Are Cervical Ribs Indicators of Childhood Cancer? A Narrative Review
Are Cervical Ribs Indicators of Childhood Cancer? A Narrative Review
Abstract
A cervical rib (CR), also known as a supernumerary or extra rib, is an additional rib that forms above the first rib, resulting from the overgrowth of the transverse proce...
GAN-BASED SYNTHETIC MEDICAL IMAGE AUGMENTATION FOR CLASS IMBALANCED DERMOSCOPIC IMAGE ANALYSIS
GAN-BASED SYNTHETIC MEDICAL IMAGE AUGMENTATION FOR CLASS IMBALANCED DERMOSCOPIC IMAGE ANALYSIS
AI-generated content (AIGC) in the context of dermoscopic image analysis describes the application of artificial intelligence (AI) approaches to produce synthetic images for traini...
Network-based molecular subtyping of acral melanoma
Network-based molecular subtyping of acral melanoma
Abstract
Acral melanoma is more biologically aggressive with a worse prognosis compared with other melanoma subtypes. However, the molecular basis underlying the bi...
Abstract 1297: The heritability of melanoma differs between light- and dark-skinned individuals of European descent
Abstract 1297: The heritability of melanoma differs between light- and dark-skinned individuals of European descent
Abstract
Melanoma is strongly associated with exposure to ultraviolet radiation (UV). The prevalence of melanoma is much higher in lighter-skinned Caucasians as comp...

