Department of Computer and Information Science, Faculty of Science and Technology, University of Macau, Macau 999078, China.
DACC Laboratory, Zhuhai Institutes of Advanced Technology of the Chinese Academy of Sciences, Zhuhai 519080, China.
Math Biosci Eng. 2021 Jun 21;18(5):5573-5591. doi: 10.3934/mbe.2021281.
As an epitome of deep learning, convolutional neural network (CNN) has shown its advantages in solving many real-world problems. Successful CNN applications on medical prognosis and diagnosis have been achieved in recent years. Their common goal is to recognize the insights from the subtle details from medical images by building a suitable CNN model with maximum accuracy and minimum error. The CNN performance is extremely sensitive to the parameter tuning for any given network structure. To approach this concern, a novel self-tuning CNN model is proposed with a significant characteristic of having a metaheuristic-based optimizer. The most optimal set of parameters is often found via our proposed method, namely group theory and random selection-based particle swarm optimization (GTRS-PSO). The insights of symmetric essentials of model structure and parameter correlation are extracted, followed by the hierarchical partitioning of parameter space, and four operators on those partitions are designed for moving neighborhoods and formulating the swarm topology accordingly. The parameters are updated by a random selection strategy at each interval of partitions during the search process. Preliminary experiments over two radiology image datasets: breast cancer and lung cancer, are conducted for a comprehensive comparison of GTRS-PSO versus other optimization algorithms. The results show that CNN with GTRS-PSO optimizer can achieve the best performance for cancer image classifications, especially when there are symmetric components inside the data properties and model structures.
作为深度学习的典范,卷积神经网络(CNN)在解决许多实际问题方面表现出了优势。近年来,在医学预后和诊断方面已经成功应用了成功的 CNN 应用。它们的共同目标是通过构建具有最大准确性和最小误差的合适 CNN 模型,从医学图像的细微细节中识别出洞察力。CNN 的性能对任何给定网络结构的参数调整都非常敏感。为了解决这个问题,提出了一种具有元启发式优化器的新型自调整 CNN 模型。通过我们提出的方法,即基于群论和随机选择的粒子群优化(GTRS-PSO),通常可以找到最佳的参数集。提取模型结构和参数相关性的对称基本要素,然后对参数空间进行分层分区,并为这些分区设计四个算子,用于移动邻域并相应地形成群体拓扑。在搜索过程中,通过在分区的每个间隔处的随机选择策略来更新参数。在两个放射学图像数据集:乳腺癌和肺癌上进行了初步实验,对 GTRS-PSO 与其他优化算法进行了全面比较。结果表明,具有 GTRS-PSO 优化器的 CNN 可以实现癌症图像分类的最佳性能,尤其是在数据属性和模型结构内部存在对称成分时。