Li Haonan, Govindarajan Vijay, Ang Tan Fong, Shaikh Zaffar Ahmed, Ksibi Amel, Chen Yen-Lin, Ku Chin Soon, Leong Ming Chern, Shabaruddin Fatiha Hana, Wan Ishak Wan Zamaniah, Por Lip Yee
Center of Research for Cyber Security and Network (CSNET), Faculty of Computer Science and Information Technology, Universiti Malaya, Kuala Lumpur, Wilayar Persekutuan, Malaysia.
Distribution and Supply Technology, Expedia Group, Seattle, WA, USA.
Digit Health. 2025 Jul 20;11:20552076251361603. doi: 10.1177/20552076251361603. eCollection 2025 Jan-Dec.
As one of the major threats to women's health worldwide, breast cancer requires early diagnosis and accurate classification, since they are key to optimizing therapeutic interventions and ensuring precise prognosis. Recently, deep learning has demonstrated notable advantages in breast cancer image classification. However, their performance heavily relies on the proper configuration of hyperparameters. To overcome the inefficiencies and weaknesses of conventional hyperparameter optimization methods, like limited effectiveness and vulnerability to premature convergence, this research proposes a Multi-Strategy Parrot Optimizer (MSPO) and applies it to breast cancer image classification tasks. Based on the original Parrot Optimizer, MSPO integrates several strategies, including Sobol sequence initialization, nonlinear decreasing inertia weight, and a chaotic parameter to enhance global exploration ability and convergence steadiness. Tests using the CEC 2022 benchmark functions reveal that MSPO surpasses leading algorithms regarding optimization precision and convergence rate. An ablation study was conducted on three variants of MSPO through CEC 2022 to further validate the effectiveness of each key strategy. Furthermore, MSPO is combined with the ResNet18 model and applied to the BreaKHis breast cancer image dataset. Results indicate that the model optimized by MSPO notably surpasses both the non-optimized version and other alternative optimization algorithms using four assessment indicators: accuracy, precision, recall, and F1-score. This validates the promising application potential and practical significance of MSPO in medical image classification tasks.
作为全球女性健康的主要威胁之一,乳腺癌需要早期诊断和准确分类,因为这是优化治疗干预措施和确保准确预后的关键。近年来,深度学习在乳腺癌图像分类中显示出显著优势。然而,其性能在很大程度上依赖于超参数的合理配置。为了克服传统超参数优化方法的低效性和弱点,如有效性有限和易陷入早熟收敛,本研究提出了一种多策略鹦鹉优化器(MSPO),并将其应用于乳腺癌图像分类任务。基于原始的鹦鹉优化器,MSPO集成了多种策略,包括索博尔序列初始化、非线性递减惯性权重和一个混沌参数,以增强全局探索能力和收敛稳定性。使用CEC 2022基准函数进行的测试表明,MSPO在优化精度和收敛速度方面超过了领先算法。通过CEC 2022对MSPO的三个变体进行了消融研究,以进一步验证每个关键策略的有效性。此外,MSPO与ResNet18模型相结合,并应用于BreaKHis乳腺癌图像数据集。结果表明,使用准确率、精确率、召回率和F1分数这四个评估指标,经MSPO优化的模型显著优于未优化版本和其他替代优化算法。这验证了MSPO在医学图像分类任务中的应用潜力和实际意义。