Walid Md Abul Ala, Mollick Swarnali, Shill Pintu Chandra, Baowaly Mrinal Kanti, Islam Md Rabiul, Ahamad Md Martuza, Othman Manal A, Samad Md Abdus
Department of Computer Science and Engineering, Khulna University of Engineering and Technology, Khulna 9203, Bangladesh.
Department of Computer Science and Engineering, Northern University of Business and Technology, Khulna 9100, Bangladesh.
Diagnostics (Basel). 2023 Oct 9;13(19):3155. doi: 10.3390/diagnostics13193155.
The study utilizes osteosarcoma hematoxylin and the Eosin-stained image dataset, which is unevenly dispersed, and it raises concerns about the potential impact on the overall performance and reliability of any analyses or models derived from the dataset. In this study, a deep-learning-based convolution neural network (CNN) and adapted heterogeneous ensemble-learning-based voting classifier have been proposed to classify osteosarcoma. The proposed methods can also resolve the issue and develop unbiased learning models by introducing an evenly distributed training dataset. Data augmentation is employed to boost the generalization abilities. Six different pre-trained CNN models, namely MobileNetV1, Mo-bileNetV2, ResNetV250, InceptionV2, EfficientNetV2B0, and NasNetMobile, are applied and evaluated in frozen and fine-tuned-based phases. In addition, a novel CNN model and adapted heterogeneous ensemble-learning-based voting classifier developed from the proposed CNN model, fine-tuned NasNetMobile model, and fine-tuned Efficient-NetV2B0 model are also introduced to classify osteosarcoma. The proposed CNN model outperforms other pre-trained models. The Kappa score obtained from the proposed CNN model is 93.09%. Notably, the proposed voting classifier attains the highest Kappa score of 96.50% and outperforms all other models. The findings of this study have practical implications in telemedicine, mobile healthcare systems, and as a supportive tool for medical professionals.
该研究使用了骨肉瘤苏木精和伊红染色图像数据集,该数据集分布不均匀,这引发了人们对从该数据集得出的任何分析或模型的整体性能和可靠性的潜在影响的担忧。在本研究中,提出了一种基于深度学习的卷积神经网络(CNN)和基于自适应异构集成学习的投票分类器来对骨肉瘤进行分类。所提出的方法还可以通过引入均匀分布的训练数据集来解决该问题并开发无偏差的学习模型。采用数据增强来提高泛化能力。应用了六种不同的预训练CNN模型,即MobileNetV1、MobileNetV2、ResNetV250、InceptionV2、EfficientNetV2B0和NasNetMobile,并在基于冻结和微调的阶段进行了评估。此外,还引入了一种新颖的CNN模型以及从所提出的CNN模型、微调后的NasNetMobile模型和微调后的EfficientNetV2B0模型开发的基于自适应异构集成学习的投票分类器来对骨肉瘤进行分类。所提出的CNN模型优于其他预训练模型。从所提出的CNN模型获得的Kappa分数为93.09%。值得注意的是,所提出的投票分类器获得了最高的Kappa分数96.50%,并且优于所有其他模型。本研究的结果在远程医疗、移动医疗系统中具有实际意义,并且可作为医疗专业人员的辅助工具。