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首页> 外文期刊>Medical Physics >A self-adaptive case-based reasoning system for dose planning in prostate cancer radiotherapy.
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A self-adaptive case-based reasoning system for dose planning in prostate cancer radiotherapy.

机译:一种基于案例的自适应推理系统,用于前列腺癌放射治疗中的剂量规划。

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PURPOSE: Prostate cancer is the most common cancer in the male population. Radiotherapy is often used in the treatment for prostate cancer. In radiotherapy treatment, the oncologist makes a trade-off between the risk and benefit of the radiation, i.e., the task is to deliver a high dose to the prostate cancer cells and minimize side effects of the treatment. The aim of our research is to develop a software system that will assist the oncologist in planning new treatments. METHODS: A nonlinear case-based reasoning system is developed to capture the expertise and experience of oncologists in treating previous patients. Importance (weights) of different clinical parameters in the dose planning is determined by the oncologist based on their past experience, and is highly subjective. The weights are usually fixed in the system. In this research, the weights are updated automatically each time after generating a treatment plan for a new patient using a group based simulated annealing approach. RESULTS: The developed approach is analyzed on the real data set collected from the Nottingham University Hospitals NHS Trust, City Hospital Campus, UK. Extensive experiments show that the dose plan suggested by the proposed method is coherent with the dose plan prescribed by an experienced oncologist or even better. CONCLUSIONS: The developed case-based reasoning system enables the use of knowledge and experience gained by the oncologist in treating new patients. This system may play a vital role to assist the oncologist in making a better decision in less computational time; it utilizes the success rate of the previously treated patients and it can also be used in teaching and training processes.
机译:目的:前列腺癌是男性人群中最常见的癌症。放射疗法通常用于前列腺癌的治疗。在放射治疗中,肿瘤科医生在放射的风险和益处之间进行权衡,即,任务是向前列腺癌细胞递送高剂量并最小化治疗的副作用。我们研究的目的是开发一种软​​件系统,以帮助肿瘤学家计划新的治疗方案。方法:开发了一个基于案例的非线性推理系统,以收集肿瘤学家在治疗先前患者中的专业知识和经验。剂量规划中不同临床参数的重要性(权重)由肿瘤科医生根据他们过去的经验确定,并且具有很高的主观性。权重通常在系统中固定。在这项研究中,每次使用基于组的模拟退火方法为新患者生成治疗计划后,权重都会自动更新。结果:对从英国诺丁汉大学医院NHS信托机构(英国城市医院校园)收集的真实数据集进行了分析,对开发的方法进行了分析。大量的实验表明,所提出的方法建议的剂量计划与经验丰富的肿瘤医师规定的剂量计划一致,甚至更好。结论:已开发的基于案例的推理系统可以利用肿瘤学家获得的知识和经验来治疗新患者。该系统可能在协助肿瘤学家以更少的计算时间做出更好的决定方面起着至关重要的作用。它利用了先前接受治疗的患者的成功率,也可以用于教学和培训过程。

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