R Anusha, Prasad Srinivas
Department of Computer Science and Engineering, GITAM Deemed to be University, Andhra Pradesh, India.
MethodsX. 2025 Aug 16;15:103564. doi: 10.1016/j.mex.2025.103564. eCollection 2025 Dec.
Cervical cancer is a serious health concern that entails high risks for individuals due to delayed detection and treatment worldwide. Formal screening for the condition is challenging in developing countries due to several factors, including medical costs, access to healthcare facilities, and delayed symptom manifestation. A blockchain-enabled healthcare system for cervical cancer risk prediction ensures data security, privacy, and accurate risk assessment. This system uses blockchain to provide decentralised, tamper-proof storage and access control over sensitive patient data, ensuring that only authorized entities can interact with the information. An improved spotted hyena optimization algorithm is employed for cervical cancer risk prediction, fine-tuning a Graph Convolutional Network (GCN) integrated with an Attention Mechanism and a Gated Recurrent Unit (GRU). The GCN captures complex relationships between medical attributes and patients, while the attention mechanism dynamically assigns weights to features based on relevance, improving predictive accuracy. The GRU processes sequential data, such as medical history, to model temporal dependencies in the risk factors. The metaheuristic optimization further enhances the model by finding the optimal parameters, boosting performance Introduces a blockchain-enabled system for secure and decentralized medical data management Applies an intelligent model for predicting cervical cancer risk using patient health records Demonstrates improved accuracy, privacy, and reliability over traditional diagnostic methods.
宫颈癌是一个严重的健康问题,由于全球范围内检测和治疗的延迟,给个人带来了很高的风险。由于包括医疗成本、获得医疗设施的机会以及症状表现延迟等多种因素,在发展中国家对这种疾病进行正式筛查具有挑战性。一个基于区块链的宫颈癌风险预测医疗系统可确保数据安全、隐私和准确的风险评估。该系统利用区块链对敏感的患者数据提供去中心化、防篡改的存储和访问控制,确保只有授权实体才能与信息进行交互。一种改进的斑点鬣狗优化算法用于宫颈癌风险预测,对集成了注意力机制和门控循环单元(GRU)的图卷积网络(GCN)进行微调。GCN捕捉医学属性与患者之间的复杂关系,而注意力机制根据相关性动态为特征分配权重,提高预测准确性。GRU处理诸如病史等序列数据,以对风险因素中的时间依赖性进行建模。元启发式优化通过找到最优参数进一步增强模型,提高性能。引入一个基于区块链的系统用于安全和去中心化的医疗数据管理。应用一个智能模型利用患者健康记录预测宫颈癌风险。相较于传统诊断方法,展示出更高的准确性、隐私性和可靠性。