支持向量机
觅食
计算机科学
分类器(UML)
人工智能
气胸
蚁群
蚁群优化算法
二元分类
机器学习
模式识别(心理学)
医学
外科
生物
生态学
作者
Yang Song,Lejing Lou,Wangjia Wang,Jie Li,Jin Xiao,Shijia Wang,Jihao Cai,Fangjun Kuang,Lei Liu,Myriam Hadjouni,Hela Elmannai,Chang Cai
标识
DOI:10.1016/j.compbiomed.2023.106948
摘要
Although PNLB is generally considered safe, it is still invasive and risky. Pneumothorax, the most common complication of lung puncture, can cause shortness of breath, chest pain, and even life-threatening. Therefore, the auxiliary diagnosis for pneumothorax is of great clinical interest. This paper proposes an ant colony optimizer with slime mould foraging behavior and collaborative hunting, called SCACO, in which slime mould foraging behavior is combined to improve the convergence accuracy and solution quality of ACOR. Then the ability of ACO to jump out of the local optimum is optimized by an adaptive collaborative hunting strategy when trapped in the local optimum. As a first step toward Pneumothorax diagnostic prediction, we suggested an SVM classifier based on bSCACO (bSCACO-SVM), which uses the proposed SCACO's binary version as the basis for its feature selection algorithms. To demonstrate the SCACO performance, we first used the slime mould foraging behavior and adaptive cooperative hunting strategy, then compared SCACO with nine basic algorithms and nine variants, respectively. Finally, we verified bSCACO-SVM on various widely used public datasets and applied it to the Pneumothorax prediction issue, showing that it has robust classification prediction capacity and can be successfully employed for tuberculous pleural effusion diagnostic prediction.
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