使用机器学习模型对舌癌病例的剂量-体积参数进行预测建模。

IF 1.1 4区 医学 Q4 ONCOLOGY
Mani Prasannakumar MSc , Velayudham Ramasubramanian PhD
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引用次数: 0

摘要

本研究的目的是为舌癌术后病例的剂量预测生成工具创建一个基于单一机构的机器学习模型。使用Eclipse治疗计划系统生成20名舌癌患者的调强放疗(IMRT)计划。在Jupyter笔记本中使用Anaconda软件,使用Python 3.10计算机语言生成了一个机器学习模型。从临床治疗计划中获得的PTV和OARs剂量被用作主要数据集。机器学习模型是用两个不同的数据集(10和20)为每个选定的卷构建的。来自10组新患者的体积被输入到软件中,用于预测相应的剂量值。通过给定的输入,将10名患者的计划生成剂量值与10和20个数据集模型的预测结果进行比较。使用PTV体积数据创建的模型以更高的精度预测剂量值。通过用TPS生成的值验证模型预测,10和20个数据集模型都预测了3%误差范围内的所有10个PTV数据和5%误差范围内大多数OAR数据。机器学习模型中实现的剂量测量特征合理地预测了PTV剂量参数和OARs约束,并在临床规划过程中为决策提供了信心。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive modeling of dose-volume parameters of carcinoma tongue cases using machine learning models

The aim of this study is to create a single institution-based machine learning model for a dose prediction generation tool for post-operative carcinoma of the tongue cases prospectively. Intensity-modulated radiotherapy (IMRT) plans for 20 patients with carcinoma of the tongue were generated using the Eclipse treatment planning system. A machine learning model was generated using a Python 3.10 computer language in a Jupyter notebook using Anaconda software. The PTVs and OARs doses obtained from the clinical treatment plans were used as a primary dataset. Machine learning models are built with two different datasets (10 and 20) for each selected volume. Volumes from 10 new sets of patients were fed into the software for predicting the corresponding dose values. Through the input given, the plan generated dose values of 10 patients were compared with the predicted outcomes of the 10 and 20 dataset models. The model created using the PTVs volume data predicted the dose values with increased accuracy. By verifying the model prediction with the TPS generated value, both the 10 and 20 dataset models predict all the 10 PTVs data within an error bound of 3% and most of the OARs data within an error bound of 5%. The dosimetric features implemented in the machine learning models reasonably predict both the PTVs dose parameter and OARs constraints and give confidence in decision-making during the clinical planning process.

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来源期刊
Medical Dosimetry
Medical Dosimetry 医学-核医学
CiteScore
2.40
自引率
0.00%
发文量
51
审稿时长
34 days
期刊介绍: Medical Dosimetry, the official journal of the American Association of Medical Dosimetrists, is the key source of information on new developments for the medical dosimetrist. Practical and comprehensive in coverage, the journal features original contributions and review articles by medical dosimetrists, oncologists, physicists, and radiation therapy technologists on clinical applications and techniques of external beam, interstitial, intracavitary and intraluminal irradiation in cancer management. Articles dealing primarily with physics will be reviewed by a specially appointed team of experts in the field.
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