Predicting Neuroblastoma Patient Risk Groups, Outcomes, and Treatment Response Using Machine Learning Methods: A Review

Leila Jahangiri
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Abstract

Neuroblastoma, a paediatric malignancy with high rates of cancer-related morbidity and mortality, is of significant interest to the field of paediatric cancers. High-risk NB tumours are usually metastatic and result in survival rates of less than 50%. Machine learning approaches have been applied to various neuroblastoma patient data to retrieve relevant clinical and biological information and develop predictive models. Given this background, this study will catalogue and summarise the literature that has used machine learning and statistical methods to analyse data such as multi-omics, histological sections, and medical images to make clinical predictions. Furthermore, the question will be turned on its head, and the use of machine learning to accurately stratify NB patients by risk groups and to predict outcomes, including survival and treatment response, will be summarised. Overall, this study aims to catalogue and summarise the important work conducted to date on the subject of expression-based predictor models and machine learning in neuroblastoma for risk stratification and patient outcomes including survival, and treatment response which may assist and direct future diagnostic and therapeutic efforts.
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使用机器学习方法预测神经母细胞瘤患者的风险组别、结果和治疗反应:综述
神经母细胞瘤是一种儿科恶性肿瘤,与癌症相关的发病率和死亡率都很高,在儿科癌症领域具有重要意义。高风险的神经母细胞瘤通常具有转移性,存活率不到 50%。机器学习方法已被应用于各种神经母细胞瘤患者数据,以检索相关的临床和生物学信息并开发预测模型。鉴于这一背景,本研究将对使用机器学习和统计方法分析多组学、组织学切片和医学影像等数据以进行临床预测的文献进行编目和总结。此外,本研究还将反其道而行之,总结利用机器学习对 NB 患者进行准确的风险分层以及预测结果(包括生存率和治疗反应)的方法。总之,本研究旨在对迄今为止就基于表达的预测模型和机器学习在神经母细胞瘤的风险分层和患者预后(包括生存期和治疗反应)方面所开展的重要工作进行编目和总结,从而为未来的诊断和治疗工作提供帮助和指导。
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