Patient Positioning Using Artificial Intelligence Neural Networks, Trained Magnetic Field Sensors and Magnetic Implants

Authors

  • Bo Lennernäs From the Department of Oncology, Sahlgrenska University Hospital, Gothenburg, Sweden
  • Maliha Edgren Department of Oncology, Radiumhemmet, Stockholm, Sweden
  • Sten Nilsson Department of Oncology, Radiumhemmet, Stockholm, Sweden

DOI:

https://doi.org/10.1080/028418699432446

Abstract

The purpose of this study was to evaluate the precision of a sensor and to ascertain the maximum distance between the sensor and the magnet, in a magnetic positioning system for external beam radiotherapy using a trained artificial intelligence neural network for position determination. Magnetic positioning for radiotherapy, previously described by Lennernäs and Nilsson, is a functional technique, but it is time consuming. The sensors are large and the distance between the sensor and the magnetic implant is limited to short distances. This paper presents a new technique for positioning, using an artificial intelligence neural network, which was trained to position the magnetic implant with at least 0.5 mm resolution in X and Y dimensions. The possibility of using the system for determination in the Z dimension, that is the distance between the magnet and the sensor, was also investigated. After training, this system positioned the magnet with a mean error of maximum 0.15 mm in all dimensions and up to 13 mm from the sensor. Of 400 test positions, 8 determinations had an error larger than 0.5 mm, maximum 0.55 mm. A position was determined in approximately 0.01 s.

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Published

1999-01-01

How to Cite

Lennernäs, B., Edgren, M., & Nilsson, S. (1999). Patient Positioning Using Artificial Intelligence Neural Networks, Trained Magnetic Field Sensors and Magnetic Implants. Acta Oncologica, 38(8), 1109–1112. https://doi.org/10.1080/028418699432446