左乳腺癌放疗中心脏剂量的估计:使用监督机器学习算法评估vDIBH的可行性。

IF 2 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Journal of Applied Clinical Medical Physics Pub Date : 2024-12-06 DOI:10.1002/acm2.14595
Shriram Ashok Rajurkar, Teerthraj Verma, Rajeev Gupta
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引用次数: 0

摘要

背景与目的:采用自愿深度吸气憋气(vDIBH)技术降低左乳腺癌放疗中的心脏剂量。很多时候,尽管进行了严格的锻炼和训练,但并不是所有的患者都能得到预期的好处。本研究的主要目的是开发一种机器学习程序,用于预测vDIBH下左乳房放疗前的平均心脏剂量。方法:对82例行改良乳房根治术的左乳腺癌患者进行放射治疗的剂量学参数分析。训练后的机器学习算法采用线性回归建立左乳腺癌放疗期间Haller指数与心脏平均剂量(HMD)之间的相关性。随后,利用HMD值对最大心脏距离(MHD)的回归关系进行建模。结果:所采用的方法有利于vDIBH治疗技术下患者的选择和放疗计划的适宜性评估。对于21例试验患者的数据,从治疗计划系统(TPS)获得的HMD均值和开发的程序预测的HMD均值分别为468.76 cGy和464.66 cGy。结论:本工作有助于在开始治疗计划过程之前精确预测左乳腺癌放射治疗的HMD。此外,该计划还提供了修改治疗设置的建议,以便在不符合预期结果的情况下更好地使用vDIBH技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Estimation of heart dose in left breast cancer radiotherapy: Assessment of vDIBH feasibility using the supervised machine learning algorithm

Background and objective

The volunteer deep inspiration breath hold (vDIBH) technique is used to reduce the heart dose in left breast cancer radiotherapy. Many times, it is faced that despite rigorous exercise and training, not all patients get benefited as expected. The primary objective of this study was to develop a machine learning program for prediction of mean heart dose before left breast radiotherapy under vDIBH.

Methods

The present work is based on the dosimetric parameters of eighty-two left breast cancer patients, who have undergone modified radical mastectomy, enrolled for their radiation treatment. The trained machine learning algorithm employed linear regression to establish a correlation between Haller Index and heart mean dose (HMD) received during the ca left breast cancer radiotherapy. Subsequently, HMD values were used to model the regression relationship with maximum heart distance (MHD).

Results

The method adopted is beneficial in patient selection and assessment for suitability of patients’ radiotherapy planning under vDIBH treatment technique. For data from 21 test patients, the mean of HMD obtained from the treatment planning system (TPS) and the mean of predicted HMD by developed program were found to be 468.76 cGy and 464.66 cGy, respectively.

Conclusion

The present work facilitates precise HMD prediction in left breast cancer radiation therapy even before starting the treatment planning process. Additionally, this program offers suggestions in terms of modifications in treatment settings for even better results of vDIBH techniques if not matches with the anticipated results.

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来源期刊
CiteScore
3.60
自引率
19.00%
发文量
331
审稿时长
3 months
期刊介绍: Journal of Applied Clinical Medical Physics is an international Open Access publication dedicated to clinical medical physics. JACMP welcomes original contributions dealing with all aspects of medical physics from scientists working in the clinical medical physics around the world. JACMP accepts only online submission. JACMP will publish: -Original Contributions: Peer-reviewed, investigations that represent new and significant contributions to the field. Recommended word count: up to 7500. -Review Articles: Reviews of major areas or sub-areas in the field of clinical medical physics. These articles may be of any length and are peer reviewed. -Technical Notes: These should be no longer than 3000 words, including key references. -Letters to the Editor: Comments on papers published in JACMP or on any other matters of interest to clinical medical physics. These should not be more than 1250 (including the literature) and their publication is only based on the decision of the editor, who occasionally asks experts on the merit of the contents. -Book Reviews: The editorial office solicits Book Reviews. -Announcements of Forthcoming Meetings: The Editor may provide notice of forthcoming meetings, course offerings, and other events relevant to clinical medical physics. -Parallel Opposed Editorial: We welcome topics relevant to clinical practice and medical physics profession. The contents can be controversial debate or opposed aspects of an issue. One author argues for the position and the other against. Each side of the debate contains an opening statement up to 800 words, followed by a rebuttal up to 500 words. Readers interested in participating in this series should contact the moderator with a proposed title and a short description of the topic
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