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基于卷积神经网络和鱼蛉螳螂优化器的结肠癌疾病诊断

Colon Cancer Disease Diagnosis Based on Convolutional Neural Network and Fishier Mantis Optimizer.

作者信息

Mohamed Amna Ali A, Hançerlioğullari Aybaba, Rahebi Javad, Rezaeizadeh Rezvan, Lopez-Guede Jose Manuel

机构信息

Department of Material Science and Engineering, University of Kastamonu, Kastamonu 37150, Turkey.

Department of Physics, University of Kastamonu, Kastamonu 37150, Turkey.

出版信息

Diagnostics (Basel). 2024 Jul 2;14(13):1417. doi: 10.3390/diagnostics14131417.

Abstract

Colon cancer is a prevalent and potentially fatal disease that demands early and accurate diagnosis for effective treatment. Traditional diagnostic approaches for colon cancer often face limitations in accuracy and efficiency, leading to challenges in early detection and treatment. In response to these challenges, this paper introduces an innovative method that leverages artificial intelligence, specifically convolutional neural network (CNN) and Fishier Mantis Optimizer, for the automated detection of colon cancer. The utilization of deep learning techniques, specifically CNN, enables the extraction of intricate features from medical imaging data, providing a robust and efficient diagnostic model. Additionally, the Fishier Mantis Optimizer, a bio-inspired optimization algorithm inspired by the hunting behavior of the mantis shrimp, is employed to fine-tune the parameters of the CNN, enhancing its convergence speed and performance. This hybrid approach aims to address the limitations of traditional diagnostic methods by leveraging the strengths of both deep learning and nature-inspired optimization to enhance the accuracy and effectiveness of colon cancer diagnosis. The proposed method was evaluated on a comprehensive dataset comprising colon cancer images, and the results demonstrate its superiority over traditional diagnostic approaches. The CNN-Fishier Mantis Optimizer model exhibited high sensitivity, specificity, and overall accuracy in distinguishing between cancer and non-cancer colon tissues. The integration of bio-inspired optimization algorithms with deep learning techniques not only contributes to the advancement of computer-aided diagnostic tools for colon cancer but also holds promise for enhancing the early detection and diagnosis of this disease, thereby facilitating timely intervention and improved patient prognosis. Various CNN designs, such as GoogLeNet and ResNet-50, were employed to capture features associated with colon diseases. However, inaccuracies were introduced in both feature extraction and data classification due to the abundance of features. To address this issue, feature reduction techniques were implemented using Fishier Mantis Optimizer algorithms, outperforming alternative methods such as Genetic Algorithms and simulated annealing. Encouraging results were obtained in the evaluation of diverse metrics, including sensitivity, specificity, accuracy, and F1-Score, which were found to be 94.87%, 96.19%, 97.65%, and 96.76%, respectively.

摘要

结肠癌是一种常见且可能致命的疾病,需要早期准确诊断以进行有效治疗。传统的结肠癌诊断方法在准确性和效率方面常常面临局限性,导致早期检测和治疗面临挑战。针对这些挑战,本文介绍了一种创新方法,该方法利用人工智能,特别是卷积神经网络(CNN)和雀尾螳螂虾优化器,用于结肠癌的自动检测。深度学习技术(特别是CNN)的应用能够从医学影像数据中提取复杂特征,提供一个强大且高效的诊断模型。此外,雀尾螳螂虾优化器是一种受螳螂虾捕食行为启发的生物启发式优化算法,用于微调CNN的参数,提高其收敛速度和性能。这种混合方法旨在通过利用深度学习和自然启发式优化的优势来解决传统诊断方法的局限性,以提高结肠癌诊断的准确性和有效性。所提出的方法在包含结肠癌图像的综合数据集上进行了评估,结果证明了其优于传统诊断方法。CNN - 雀尾螳螂虾优化器模型在区分癌症和非癌症结肠组织方面表现出高灵敏度、特异性和总体准确性。将生物启发式优化算法与深度学习技术相结合,不仅有助于推进结肠癌的计算机辅助诊断工具,还有望加强对该疾病的早期检测和诊断,从而促进及时干预并改善患者预后。采用了各种CNN设计,如GoogLeNet和ResNet - 50,来捕捉与结肠疾病相关的特征。然而,由于特征丰富,在特征提取和数据分类中都引入了不准确之处。为了解决这个问题,使用雀尾螳螂虾优化器算法实施了特征约简技术,其性能优于遗传算法和模拟退火等替代方法。在对包括灵敏度、特异性、准确性和F1分数在内的各种指标的评估中获得了令人鼓舞的结果,分别为94.87%、96.19%、97.65%和96.76%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e2c2/11241213/f834163245fe/diagnostics-14-01417-g001.jpg

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