An eXplainable machine learning framework for predicting the impact of pesticide exposure in lung cancer prognosis

IF 3.1 3区 计算机科学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Journal of Computational Science Pub Date : 2024-11-25 DOI:10.1016/j.jocs.2024.102476
Nitha V.R., Vinod Chandra S.S.
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引用次数: 0

Abstract

Lung cancer, the second most prevalent and lethal cancer, is caused by aberrant and uncontrolled cell division in the lungs. Once lung cancer spreads to surrounding tissues or organs, the likelihood of recovery declines; hence, early illness detection is vital. Machine learning has shown significant potential in several healthcare applications. Examining various factors and trends in the data, the machine learning model can predict lung cancer menace by pinpointing those more susceptible to the illness. Among the various causes of lung cancer, pesticide is a major contributor. ‘Pesticide’ refers to any chemical used in agriculture to manage pests like weeds and insects. Numerous health hazards, including the possibility of developing cancer, have been linked to exposure to specific pesticides. Our objective is to obtain the trust of medical professionals and patients depending on how interpretable machine learning models are in healthcare. This paper deals with implementing the proposed study by utilizing a public dataset from a Thai case study to predict the risk of lung cancer caused by pesticide exposure. Since the dataset was highly imbalanced, a hybrid normalization technique was utilized, combining the Synthetic Minority Oversampling Technique (SMOTE) and Edited Nearest Neighbor (ENN). We applied a two-stage feature selection technique combined with Extra Tree Classifier and Principal Component Analysis. An eXplainable XGBoost Classifier is developed to predict lung cancer risk based on pesticide exposure. The robustness of the model is reflected in the results, with accuracy, sensitivity, and F1-Score as 99.00%, 98.87%, and 98.57%, respectively. Two public datasets were utilized to generalize the model, and the model performed well on both datasets. The model achieved accuracy, sensitivity, and F1-Score of 99.00%, 99.00%, and 99.33% on the ‘Lung Cancer Prediction’ dataset. The model is trained and tested on the ‘survey lung cancer’ dataset and obtained an accuracy, sensitivity, and F1-Score of 99.00%, 99.00%, 99.00%, respectively. The proposed model outperformed existing state-of-the-art methodologies regarding quality metrics. An illustration is done on the XAI (eXplainable Artificial Intelligence) model by utilizing SHapley Additive exPlanations (SHAP), thereby identifying the most relevant features contributing to the lung cancer menace.
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一个可解释的机器学习框架,用于预测农药暴露对肺癌预后的影响
肺癌是第二大流行和致命的癌症,是由肺部异常和不受控制的细胞分裂引起的。一旦肺癌扩散到周围组织或器官,康复的可能性就会下降;因此,早期疾病检测至关重要。机器学习在一些医疗保健应用中显示出巨大的潜力。通过检查数据中的各种因素和趋势,机器学习模型可以通过精确定位那些更容易患病的人来预测肺癌的威胁。在导致肺癌的各种原因中,农药是一个主要因素。“农药”指的是农业中用于控制杂草和昆虫等害虫的任何化学品。许多健康危害,包括患癌症的可能性,都与接触特定的农药有关。我们的目标是获得医疗专业人员和患者的信任,这取决于机器学习模型在医疗保健中的可解释性。本文通过利用泰国案例研究的公共数据集来预测农药暴露引起的肺癌风险,从而实现拟议的研究。由于数据集高度不平衡,采用了一种混合归一化技术,将合成少数过采样技术(SMOTE)和编辑最近邻技术(ENN)相结合。我们采用了一种结合额外树分类器和主成分分析的两阶段特征选择技术。开发了一种可解释的XGBoost分类器,用于基于农药暴露预测肺癌风险。模型的稳健性体现在结果中,准确率为99.00%,灵敏度为98.87%,F1-Score为98.57%。利用两个公共数据集对模型进行泛化,模型在两个数据集上都表现良好。该模型在“肺癌预测”数据集上的准确性、灵敏度和F1-Score分别为99.00%、99.00%和99.33%。该模型在“调查肺癌”数据集上进行了训练和测试,分别获得了99.00%、99.00%、99.00%的准确性、灵敏度和F1-Score。提出的模型在质量度量方面优于现有的最先进的方法。利用SHapley加性解释(SHAP)对XAI(可解释人工智能)模型进行了说明,从而确定了导致肺癌威胁的最相关特征。
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来源期刊
Journal of Computational Science
Journal of Computational Science COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-COMPUTER SCIENCE, THEORY & METHODS
CiteScore
5.50
自引率
3.00%
发文量
227
审稿时长
41 days
期刊介绍: Computational Science is a rapidly growing multi- and interdisciplinary field that uses advanced computing and data analysis to understand and solve complex problems. It has reached a level of predictive capability that now firmly complements the traditional pillars of experimentation and theory. The recent advances in experimental techniques such as detectors, on-line sensor networks and high-resolution imaging techniques, have opened up new windows into physical and biological processes at many levels of detail. The resulting data explosion allows for detailed data driven modeling and simulation. This new discipline in science combines computational thinking, modern computational methods, devices and collateral technologies to address problems far beyond the scope of traditional numerical methods. Computational science typically unifies three distinct elements: • Modeling, Algorithms and Simulations (e.g. numerical and non-numerical, discrete and continuous); • Software developed to solve science (e.g., biological, physical, and social), engineering, medicine, and humanities problems; • Computer and information science that develops and optimizes the advanced system hardware, software, networking, and data management components (e.g. problem solving environments).
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