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Deep learning-based detection and classification of multi-leaf collimator modeling errors in volumetric modulated radiation therapy.
Nakamura, Sae; Sakai, Madoka; Ishizaka, Natsuki; Mayumi, Kazuki; Kinoshita, Tomotaka; Akamatsu, Shinya; Nishikata, Takayuki; Tanabe, Shunpei; Nakano, Hisashi; Tanabe, Satoshi; Takizawa, Takeshi; Yamada, Takumi; Sakai, Hironori; Kaidu, Motoki; Sasamoto, Ryuta; Ishikawa, Hiroyuki; Utsunomiya, Satoru.
  • Nakamura S; Department of Radiation Oncology, Niigata Neurosurgical Hospital, Nishi-ku, Niigata City, Niigata, Japan.
  • Sakai M; Department of Radiology, Nagaoka Chuo General Hospital, Nagaoka, Nagaoka, Niigata, Japan.
  • Ishizaka N; Department of Radiology and Radiation Oncology, Niigata University Graduate School of Medical and Dental Sciences, Chuo-ku, Niigata City, Niigata, Japan.
  • Mayumi K; Department of Radiology, Niigata Prefectural Shibata Hospital, Shibata City, Niigata, Japan.
  • Kinoshita T; Department of Radiological Technology, Niigata University Graduate School of Health Sciences, Chuo-ku, Niigata City, Niigata, Japan.
  • Akamatsu S; Department of Radiological Technology, Niigata University Graduate School of Health Sciences, Chuo-ku, Niigata City, Niigata, Japan.
  • Nishikata T; Department of Radiological Technology, Niigata University Graduate School of Health Sciences, Chuo-ku, Niigata City, Niigata, Japan.
  • Tanabe S; Department of Radiology, Takeda General Hospital, Aizuwakamatu City, Fukushima, Japan.
  • Nakano H; Department of Radiological Technology, Niigata University Graduate School of Health Sciences, Chuo-ku, Niigata City, Niigata, Japan.
  • Tanabe S; Division of Radiology, Nagaoka Red Cross Hospital, Nagaoka City, Niigata, Japan.
  • Takizawa T; Department of Radiation Oncology, Niigata University Medical and Dental Hospital, Chuo-ku, Niigata City, Niigata, Japan.
  • Yamada T; Department of Radiation Oncology, Niigata University Medical and Dental Hospital, Chuo-ku, Niigata City, Niigata, Japan.
  • Sakai H; Department of Radiation Oncology, Niigata University Medical and Dental Hospital, Chuo-ku, Niigata City, Niigata, Japan.
  • Kaidu M; Department of Radiation Oncology, Niigata Neurosurgical Hospital, Nishi-ku, Niigata City, Niigata, Japan.
  • Sasamoto R; Department of Radiology and Radiation Oncology, Niigata University Graduate School of Medical and Dental Sciences, Chuo-ku, Niigata City, Niigata, Japan.
  • Ishikawa H; Section of Radiology, Department of Clinical Support, Niigata University Medical and Dental Hospital, Chuo-ku, Niigata City, Niigata, Japan.
  • Utsunomiya S; Section of Radiology, Department of Clinical Support, Niigata University Medical and Dental Hospital, Chuo-ku, Niigata City, Niigata, Japan.
J Appl Clin Med Phys ; 24(12): e14136, 2023 Dec.
Article en En | MEDLINE | ID: mdl-37633834
PURPOSE: The purpose of this study was to create and evaluate deep learning-based models to detect and classify errors of multi-leaf collimator (MLC) modeling parameters in volumetric modulated radiation therapy (VMAT), namely the transmission factor (TF) and the dosimetric leaf gap (DLG). METHODS: A total of 33 clinical VMAT plans for prostate and head-and-neck cancer were used, assuming a cylindrical and homogeneous phantom, and error plans were created by altering the original value of the TF and the DLG by ± 10, 20, and 30% in the treatment planning system (TPS). The Gaussian filters of σ = 0.5 $\sigma = 0.5$ and 1.0 were applied to the planar dose maps of the error-free plan to mimic the measurement dose map, and thus dose difference maps between the error-free and error plans were obtained. We evaluated 3 deep learning-based models, created to perform the following detections/classifications: (1) error-free versus TF error, (2) error-free versus DLG error, and (3) TF versus DLG error. Models to classify the sign of the errors were also created and evaluated. A gamma analysis was performed for comparison. RESULTS: The detection and classification of TF and DLG error were feasible for σ = 0.5 $\sigma = 0.5$ ; however, a considerable reduction of accuracy was observed for σ = 1.0 $\sigma = 1.0$ depending on the magnitude of error and treatment site. The sign of errors was detectable by the specifically trained models for σ = 0.5 $\sigma = 0.5$ and 1.0. The gamma analysis could not detect errors. CONCLUSIONS: We demonstrated that the deep learning-based models could feasibly detect and classify TF and DLG errors in VMAT dose distributions, depending on the magnitude of the error, treatment site, and the degree of mimicked measurement doses.
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Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Radioterapia de Intensidad Modulada / Aprendizaje Profundo Tipo de estudio: Diagnostic_studies / Prognostic_studies Límite: Humans / Male Idioma: En Año: 2023 Tipo del documento: Article

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Radioterapia de Intensidad Modulada / Aprendizaje Profundo Tipo de estudio: Diagnostic_studies / Prognostic_studies Límite: Humans / Male Idioma: En Año: 2023 Tipo del documento: Article