Su Hang, Han Zhengyuan, Fu Yujie, Zhao Dong, Yu Fanhua, Heidari Ali Asghar, Zhang Yu, Shou Yeqi, Wu Peiliang, Chen Huiling, Chen Yanfan
College of Computer Science and Technology, Changchun Normal University, Changchun, Jilin, China.
Department of Pulmonary and Critical Care Medicine, The First Affiliated Hospital of Wenzhou Medical University, Wenzhou, China.
Front Neuroinform. 2022 Dec 16;16:1029690. doi: 10.3389/fninf.2022.1029690. eCollection 2022.
Pulmonary embolism (PE) is a cardiopulmonary condition that can be fatal. PE can lead to sudden cardiovascular collapse and is potentially life-threatening, necessitating risk classification to modify therapy following the diagnosis of PE. We collected clinical characteristics, routine blood data, and arterial blood gas analysis data from all 139 patients.
Combining these data, this paper proposes a PE risk stratified prediction framework based on machine learning technology. An improved algorithm is proposed by adding sobol sequence and black hole mechanism to the cuckoo search algorithm (CS), called SBCS. Based on the coupling of the enhanced algorithm and the kernel extreme learning machine (KELM), a prediction framework is also proposed.
To confirm the overall performance of SBCS, we run benchmark function experiments in this work. The results demonstrate that SBCS has great convergence accuracy and speed. Then, tests based on seven open data sets are carried out in this study to verify the performance of SBCS on the feature selection problem. To further demonstrate the usefulness and applicability of the SBCS-KELM framework, this paper conducts aided diagnosis experiments on PE data collected from the hospital.
The experiment findings show that the indicators chosen, such as syncope, systolic blood pressure (SBP), oxygen saturation (SaO2%), white blood cell (WBC), neutrophil percentage (NEUT%), and others, are crucial for the feature selection approach presented in this study to assess the severity of PE. The classification results reveal that the prediction model's accuracy is 99.26% and its sensitivity is 98.57%. It is expected to become a new and accurate method to distinguish the severity of PE.
肺栓塞(PE)是一种可能致命的心肺疾病。肺栓塞可导致突发性心血管衰竭,具有潜在生命危险,因此在肺栓塞诊断后需要进行风险分类以调整治疗方案。我们收集了139例患者的临床特征、常规血液数据和动脉血气分析数据。
结合这些数据,本文提出了一种基于机器学习技术的肺栓塞风险分层预测框架。通过在布谷鸟搜索算法(CS)中加入索博尔序列和黑洞机制,提出了一种改进算法,称为SBCS。基于该增强算法与核极限学习机(KELM)的耦合,还提出了一个预测框架。
为了确认SBCS的整体性能,我们在这项工作中进行了基准函数实验。结果表明,SBCS具有很高的收敛精度和速度。然后,本研究基于七个开放数据集进行测试,以验证SBCS在特征选择问题上的性能。为了进一步证明SBCS-KELM框架的实用性和适用性,本文对从医院收集的肺栓塞数据进行了辅助诊断实验。
实验结果表明,所选指标,如晕厥、收缩压(SBP)、血氧饱和度(SaO2%)、白细胞(WBC)、中性粒细胞百分比(NEUT%)等,对于本研究中提出的用于评估肺栓塞严重程度的特征选择方法至关重要。分类结果显示,预测模型的准确率为99.26%,灵敏度为98.57%。有望成为一种区分肺栓塞严重程度的新的准确方法。