Rate the Article: Machine Learning - Based Prediction of Genotoxicity in Peripheral Erythrocytes of Fish (Labeo catla): A Comparative Analysis of Algorithms, IJSR, Call for Papers, Online Journal
International Journal of Science and Research (IJSR)

International Journal of Science and Research (IJSR)
Call for Papers | Fully Refereed | Open Access | Double Blind Peer Reviewed

ISSN: 2319-7064

Downloads: 3 | Views: 143 | Weekly Hits: ⮙1 | Monthly Hits: ⮙1

Research Paper | Food & Nutrition | India | Volume 13 Issue 9, September 2024 | Rating: 5.1 / 10


Machine Learning - Based Prediction of Genotoxicity in Peripheral Erythrocytes of Fish (Labeo catla): A Comparative Analysis of Algorithms

Kousik Seal, Soumendra Nath Talapatra


Abstract: This study utilizes machine learning ML algorithms to predict the accuracy of a genotoxicity dataset, focusing on nuclear abnormalities in peripheral erythrocytes of Labeo catla. Eight ML algorithms, including Logistic Regression, K - nearest neighbour, Lazy. KStar, DecisionStump, Hoeffding Tree, RandomForest, and RandomTree, were tested using the WEKA tool. Among these, RandomForest demonstrated the highest predictive accuracy with an area under the ROC curve of 91%. These results indicate that ML algorithms, particularly RandomForest, provide an effective approach for predicting genotoxicity in fish species.


Keywords: Edible fish, Genotoxicity dataset, Machine learning, MN & NA parameters, Labeo catla


Edition: Volume 13 Issue 9, September 2024,


Pages: 1378 - 1380



Rate this Article


Select Rating (Lowest: 1, Highest: 10)

5

Your Comments (Only high quality comments will be accepted.)

Characters: 0

Your Full Name:


Your Valid Email Address:


Verification Code will appear in 2 Seconds ... Wait

Top