ESTRO 2023 - Abstract Book

S1314

Digital Posters

ESTRO 2023

Conclusion The results of this work showed the effectiveness of a proposed method for detecting and quantifying automatically the displacements of the leaves in the Picket Fence Test using free software Fiji/ImageJ.

PO-1619 AI-based classifier using geometrical features to minimize heart dose in left breast with VMAT

A. Bresolin 1 , P. Gallo 1 , F. La Fauci 1 , F. Lobefalo 1 , L. Paganini 1 , G. Reggiori 1,2 , M. Pelizzoli 1 , S. Parabicoli 1 , N. Lambri 1,2 , P. Mancosu 1 , R. Spoto 1 , L. Dominici 1 , D. Franceschini 3 , M. Scorsetti 1,2 , S. Tomatis 1 1 IRCCS Humanitas Research Hospital, Radiotherapy and Radiosurgery Department, Milan, Italy; 2 Humanitas University, Department of Biomedical Sciences, Milan, Italy; 3 IRCCS Humanitas Research Hospital, Radiotherapy and Radiosurgery Department, Rozzano, Italy Purpose or Objective Radiotherapy treatment plan of the left breast is critical because of heart proximity. Mean heart dose (MHD) correlates with late heart toxicity. In this study, geometrical features accounting for Organs at Risk (OARs) proximity and structures shape of the breast treatment region were quantified using the Expansion Intersection Histogram method (EIH). An AI predictive model was used to predict MHD from these features. The impact of predictive variables on the plan complexity was also evaluated. Materials and Methods 379 consecutive VMAT left breast cancer patients treated between 2019-2022 at our Institute have been considered. Dose prescription to the whole breast was 40.5 Gy in 15 fractions, and 48 Gy to the surgical bed in simultaneous integrated boost (SIB, 254 cases). Progressive target isotropic expansions and mapping of the corresponding volume intersection with OARs into the EIH graph were automatically extracted using an in-house script. Separation (S, min non zero overlap expansion) and Wrapping (W, mean EIH slope between S and S+3 cm) were extracted as potential MHD predictors along with the volume (V) of the involved structures. The use of auto-planning, deep inspiration breath hold (DIBH), and the number of arcs were considered as additional features. A backward stepwise linear regression analysis (pr=0.01) was performed with MHD as the dependent variable. A 3 Gy MHD threshold, already applied in our department as a warning level, was used to label a case as “high risk” for late complications. The classifier was validated by ROC analysis. Cases were randomly assigned in the train (50%) and test (50%) sets. A plan complexity index (MITOTAL) was calculated for all plans and used in place of MHD as dependent variable of the regression model to associate geometry to plan complexity. Significance was set below the 0.05 level. Results The output of the regression model is shown in table 1 for the training set. The classification results for all patients are reported in figure 1. Multivariate association between geometrical features and MHD was demonstrated, with higher predicted MHDs related to larger targets, wrapped around the heart. An increase of 0.38 Gy was found when more than 2 VMAT arcs were used for therapy. The distance S between target and OARs was an effective MHD mitigating factor, as well as ipsi-lateral lung volume. MHD was also reduced by 0.32 Gy using auto-planning. MITOTAL showed a direct association with target volume (p<0.01), with a significant increase when auto-planning was used (p=0.03), while a negative correlation with the number of arcs was found (p<0.01).

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