Copenhagen, Denmark
Onsite/Online

ESTRO 2022

Session Item

Monday
May 09
14:15 - 15:15
Mini-Oral Theatre 2
22: AI, big data, automation
Eugenia Vlaskou Badra, Switzerland;
Stephanie Tanadini-Lang, Switzerland
Mini-Oral
Interdisciplinary
Machine-learning based treatment couch parameter prediction for surface guided radiotherapy
Geert De Kerf, Belgium
MO-0890

Abstract

Machine-learning based treatment couch parameter prediction for surface guided radiotherapy
Authors:

Geert De Kerf1, Michaël Claessens2, Isabelle Mollaert1, Wim Vingerhoed1, An Sprangers1, Dirk Verellen1,3

1Iridium Netwerk, Radiotherapy, Wilrijk, Belgium; 2University Antwerp, Medicine and Health Sciences, Antwerp, Belgium; 3University of Antwerp, Medicine and Health Sciences, Antwerp, Belgium

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Purpose or Objective

Recently, Surface Guided Radiation Therapy (SGRT) paves the way towards a complete replacement of patient’s tattooing with a markerless patient’s workflow as being accurate and reproducible [1] [2]. As early adopters we implemented SGRT on all our machines (10 linacs and over 6000 patients per year), raising the need of an automated and efficient workflow. Accuracy of SGRT-based initial patient’s setup hardly depends on curvature type and symmetry of patient’s body in the irradiated area and can be improved by using additional information like tattoos, fiducial markers or predicted couch parameters  [3] [4] This study aims to improve the SGRT workflow by predicting couch parameters via a machine learning approach to give RTTs additional guidance during initial patient setup on where patient is expected according to the TPS.

 

Material and Methods

Barium markers are placed underneath both department’s CT scanners couches (Philips and Siemens). This indexation makes the couch parameter prediction independent of any immobilization device, except for the Encompass SRS Immobilization System (Qfix) which floats beyond the couch top. The latter has embedded radio-opaque markers that will be used as reference point.  

On a CT image, marker detection starts with a rough estimate of the expected marker position in X and Y direction, followed by a thresholding step.  Afterwards, a K-means clustering (n_clusters = 2) algorithm tries to detect the couch markers or the cranial Encompass reference point (n_clusters = 1). Finally, a post-processing step validates the detected markers and the expected treatment couch values are calculated (Figure 1).


At first fraction, patients are positioned using an SGRT system (
AlignRT, cRAD) before acquiring an image for final patient position verification.  The treatment couch positions are captured at the moment of image acquisition to resemble the parameters that minimizes the SGRT spatial positioning deviations. For verification, the predicted couch coordinates of 99 treatments (29 SRS, 70 couch markers for lung, prostate or oligo meta treatments) are compared against the acquired parameters after the patient was positioned according to the SGRT instructions. 

Results

Based on preliminary data, couch parameters could be predicted with an accuracy of 0.2mm ± 6.5 (see Figure 2). Highest accuracies were obtained for patient positioned with the Encompass system (0.2mm ± 1.7). Lowest accuracy is obtained for SBRT Lung patients (0.4mm ± 8.8) positioned on a thorax support and most variation was seen in the lateral direction.


Conclusion

The ML approach was able to detect markers both underneath the CT scanner’s couch top or the SRS reference point. Based on these detected points, couch parameters could be predicted with high accuracy suitable as a reliable starting point for efficient SGRT-based patient positioning. Indexing all immobilization devices is key to minimize positioning variations and to maximize accuracy.