Suhandono, Nugroho
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Cervical Pre-cancer Classification Using MLP Based on Hybrid Features from GLCM, LBP, and MobileNetV2 Suhandono, Nugroho; Nurmaini, Siti
Computer Engineering and Applications Journal (ComEngApp) Vol. 14 No. 2 (2025)
Publisher : Universitas Sriwijaya

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Abstract

The early and accurate diagnosis of cervical intraepithelial neoplasia lesions (CIN), particularly in a resource-limited environment, is paramount in helping to control the rising epidemic of cervical cancer. This research offers a hybrid classification model that merge texture features like Gray Level Co-occurrence Matrix (GLCM) and Local Binary Pattern (LBP), alongside semantic features from MobileNetV2. These features, after being extracted, are merged and supplied to a Multilayer Perceptron (MLP) for multiclass classification into Normal, CIN1, CIN2, or CIN3. The model was trained and evaluated using a 5-fold stratified cross-validation technique on an IARC dataset that contains 200 cases of colposcopy images. The experimental results illustrate that the model developed with a stratified k-fold cross-validation performed consistently well with high performance, average accuracy reported as 86.75% ± 2.62% and Cohen's kappa 0.7963 ± 0.0524 showed substantial to almost perfect in agreement across folds. The best performance was recorded for Fold 4 achieving 90.31% accuracy, while maintaining robust F1-scores across all classes. This hybrid approach offers a promising direction for developing efficient and accurate computer-aided diagnosis (CAD) systems for cervical lesion classification.
Cervical Intraepithelial Neoplasia Classification Based on Deep Neural Network with Hybrid Features Fusion Suhandono, Nugroho; Nurmaini, Siti
Simetris: Jurnal Teknik Mesin, Elektro dan Ilmu Komputer Vol. 17 No. 1 (2026): JURNAL SIMETRIS VOLUME 17 NO 1 TAHUN 2026
Publisher : Fakultas Teknik Universitas Muria Kudus

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Abstract

Cervical cancer remains one of the leading causes of cancer-related mortality among women worldwide, particularly in low- and middle-income countries where access to trained specialists and advanced diagnostic infrastructure is severely limited. Cervical Intraepithelial Neoplasia (CIN), the precancerous lesion preceding cervical malignancy, exists across a spectrum of severity — CIN1, CIN2, and CIN3 — each requiring distinct clinical management. Accurate and timely differentiation of these stages through colposcopy is critical; however, the subjective nature of visual interpretation, high inter-observer variability, and the scarcity of experienced colposcopists in resource-constrained settings frequently lead to misclassification, delayed treatment, or unnecessary interventions. These diagnostic limitations underscore an urgent need for automated, objective, and reliable computer-aided diagnosis (CAD) tools capable of supporting clinicians in multiclass cervical lesion grading. To address this challenge, this study proposes a hybrid CAD framework for multiclass cervical lesion classification using colposcopy images. The proposed method integrates handcrafted texture and color features — specifically Color Moments and Gray Level Run Length Matrix (GLRLM) — with deep semantic features extracted from pretrained EfficientNetB3 and MobileNetV3 networks. Classification is performed by a fully connected Deep Neural Network (DNN) operating on the aggregated feature representations to categorize images into four classes: Normal, CIN1, CIN2, and CIN3. Experiments were conducted on an IARC colposcopy dataset comprising 200 cases, employing stratified 5-fold cross-validation to ensure robust evaluation. The proposed methodology achieved an average accuracy of 82.67% ± 3.65% and a Cohen's Kappa of 0.7466 ± 0.0634, with a peak accuracy of 86.22% on the best-performing fold. Results demonstrate strong recognition performance for Normal and CIN3 classes, while intermediate stages remain more challenging due to overlapping visual characteristics. Overall, the hybrid feature fusion strategy enhances classification robustness and shows promise for supporting reliable cervical precancer screening in resource-limited healthcare environments.