Can a machine learning algorithm accurately predict mean heart dose before left breast radiotherapy under vDIBH?
82 left breast cancer patients who have undergone modified radical mastectomy, enrolled for radiation treatment
Machine learning program using linear regression to predict mean heart dose (HMD) based on Haller Index and maximum heart distance (MHD)
Treatment planning system (TPS) calculated mean heart dose
Mean heart dose (HMD) prediction accuracysurrogate
A supervised machine learning algorithm can accurately predict mean heart dose prior to left breast cancer radiotherapy using vDIBH, aiding in patient selection and treatment planning.
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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Shriram Rajurkar
King George's Medical University
Teerthraj Verma
King George's Medical University
Rajeev Gupta
South African Medical Research Council
Journal of Applied Clinical Medical Physics
King George's Medical University
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Rajurkar et al. (Fri,) studied this question.
synapsesocial.com/papers/69f7e247b3779c4692288e69 — DOI: https://doi.org/10.1002/acm2.14595
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