Litcius/Paper detail

Advancements in machine learning techniques for precise detection and classification of lung cancer

Hamza Abu Owida, Areen Arabiat, Muhammad Al-Ayyad, Muneera Altayeb

2025Bulletin of Electrical Engineering and Informatics6 citationsDOIOpen Access PDF

Abstract

Lung cancer remains one of the most prevalent and lethal malignancies worldwide, necessitating early detection and accurate classification for effective treatment. In this work, we present a unique machine learning (ML) model that uses medical imaging data to detect and classify lung cancer. Utilizing a dataset of 613 images which obtained from Kaggle, our model combines sophisticated feature extraction methods with three essential algorithms: AdaBoost, stochastic gradient descent (SGD), and random forest (RF). Orange3 data mining software was used to classify the model after it was preprocessed and features were extracted using MATLAB. Nonetheless, the model showed good performance in identifying lung cancer lesions in four different categories: squamous cell carcinoma, big cell carcinoma, adenocarcinoma, and normal. With an accuracy of 0.998 and an AUC range of 1.000, AdaBoost notably produced the best results. Overall, ensemble ML techniques demonstrated notable benefits over single classifiers, indicating its potential to aid in the creation of accurate instruments for the diagnosis of lung cancer in its early stages.

Topics & Concepts

AdaBoostArtificial intelligenceMachine learningRandom forestLung cancerComputer scienceFeature extractionEnsemble learningSoftwarePattern recognition (psychology)Stochastic gradient descentCancerStatistical classificationFeature (linguistics)Gradient boostingMatching (statistics)Data miningMedical imagingFeature selectionLung cancer screeningDimensionality reductionGradient descentLung Cancer Diagnosis and TreatmentAI in cancer detectionRadiomics and Machine Learning in Medical Imaging