A Review On Early Detection Of Chronic Kidney Disease

Mamatha B, Sujatha P Terdal
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Abstract

Early detection of Chronic Kidney Disease (CKD) is critical for timely intervention and effective treatment. Deep learning algorithms have demonstrated promise in medical applications, including disease detection. In this study, we propose a deep learning-based system for early CKD detection using the Chronic Kidney Disease dataset from Kaggle. Additionally, we incorporate the Grasshopper Optimization Algorithm (GOA) for feature selection to enhance the system's performance and interpretability. Our system employs a convolutional neural network (CNN) architecture to analyze clinical and laboratory attributes from the CKD dataset, obtained from Kaggle, consisting of 4,000 instances with 25 attributes. These attributes encompass patient demographics, blood tests, and medical history, providing a comprehensive representation of CKD-related factors. To improve the system's performance, we integrate the GOA for feature selection. The GOA is a nature-inspired metaheuristic optimization algorithm that mimics the foraging behavior of grasshoppers. It aims to identify the most relevant attributes associated with CKD from the dataset. By selecting a subset of informative features, we enhance the model's predictive accuracy and reduce overfitting. During the training phase, the CNN learns to automatically extract relevant features and patterns associated with CKD from the selected attributes. Additionally, data preprocessing techniques such as normalization and feature scaling are applied to further improve the model's performance and generalizability. To evaluate the system's performance, we conduct experiments using a separate test dataset comprising 1,000 instances from the CKD dataset. The incorporation of the GOA for feature selection in our deep learning system not only improves its performance but also enhances interpretability. By identifying the most relevant attributes associated with CKD, we focus on key biomarkers and risk factors, enhancing the system's accuracy and providing valuable insights into the disease. Our research showcases the potential of deep learning algorithms, coupled with GOA-based feature selection, for early CKD detection. By leveraging the Kaggle CKD dataset and incorporating the GOA, we contribute to improving the accuracy and applicability of the system in real-world clinical settings. To handle Big data we are proposing to implement this problem on Pyspark one of the Big data computational environments for effective learning. In this platform, we can dynamically scale the infrastructure as per the demand of the data. Ultimately, our work aims to advance the early detection and management of CKD, leading to improved patient outcomes and more effective healthcare interventions.
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慢性肾病早期检测综述
慢性肾脏病(CKD)的早期检测对于及时干预和有效治疗至关重要。深度学习算法在包括疾病检测在内的医疗应用中展现出了前景。在本研究中,我们利用 Kaggle 的慢性肾病数据集,提出了一种基于深度学习的慢性肾病早期检测系统。此外,我们还采用了草蜢优化算法(GOA)进行特征选择,以提高系统的性能和可解释性。我们的系统采用卷积神经网络(CNN)架构,分析来自 Kaggle 的慢性病数据集的临床和实验室属性,该数据集由 4000 个实例和 25 个属性组成。这些属性包括患者的人口统计学特征、血液化验和病史,全面反映了与 CKD 相关的因素。为了提高系统的性能,我们整合了 GOA 来进行特征选择。GOA 是一种受自然启发的元启发式优化算法,它模仿了蚱蜢的觅食行为。它旨在从数据集中找出与 CKD 最相关的属性。通过选择信息特征子集,我们提高了模型的预测准确性并减少了过拟合。在训练阶段,CNN 学会从选定的属性中自动提取与 CKD 相关的特征和模式。此外,还应用了归一化和特征缩放等数据预处理技术,以进一步提高模型的性能和普适性。为了评估该系统的性能,我们使用了一个单独的测试数据集,其中包括来自 CKD 数据集的 1,000 个实例。在我们的深度学习系统中采用 GOA 进行特征选择不仅能提高性能,还能增强可解释性。通过识别与 CKD 相关的最相关属性,我们将重点放在了关键生物标记物和风险因素上,从而提高了系统的准确性,并提供了对疾病的宝贵见解。我们的研究展示了深度学习算法与基于 GOA 的特征选择相结合在早期 CKD 检测方面的潜力。通过利用 Kaggle CKD 数据集并结合 GOA,我们为提高系统在真实世界临床环境中的准确性和适用性做出了贡献。为了处理大数据,我们建议在 Pyspark 上实现这一问题,Pyspark 是一种用于有效学习的大数据计算环境。在这个平台上,我们可以根据数据需求动态扩展基础设施。最终,我们的工作旨在推进慢性肾功能衰竭的早期检测和管理,从而改善患者的预后,提高医疗干预的有效性。
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