PURPOSE: The aim of this study was to evaluate the potential and feasibility of radiomic features extracted from low field strength (0.35 T) magnetic resonance images (MRIs) in predicting treatment response for patients with pancreatic cancer undergoing stereotactic body radiotherapy (SBRT). METHODS: Twenty patients with unresected, non-metastatic pancreatic ductal adenocarcinoma (PDAC) were enrolled, all of whom received neoadjuvant chemotherapy followed by five-fraction MR-guided SBRT with a radiation dose range of 33-50 Gy. For each patient, five daily setup scans were acquired from a hybrid 0.35 T MRI/radiotherapy unit. Tumor heterogeneity quantified with radiomic features extracted from the gross tumor volume (GTV) was averaged over the course of treatment. Random forest (RF) and adaptive least absolute shrinkage and selection operator (LASSO) classification models were constructed to identify radiomics features predictive of treatment response. Predictive capability of the top-performing features was then evaluated using the receiver operating characteristic area under curve (AUC) obtained using leave-one-out cross-validation. RESULTS: Half of the 20 patients showed response to treatment, defined by tumor regression on histopathology or tumor response on follow-up dynamic contrast-enhanced computed tomography (CT). The most predictive features selected by the RF method were GLCM energy and GLSZM gray-level variance. The RF-based model achieved an AUC = 0.81 with a 95% confidence interval of [0.594 to 1] The LASSO algorithm selected GLCM energy as the only predictive feature, achieving an AUC = 0.81 with 95% confidence interval of [0.596 to 1]. CONCLUSION: The findings of this study suggest that radiomic features extracted during MR-guided SBRT may contain predictive information about response of PDAC patients to treatment. Using the images acquired during treatment of PDAC patients supports continued expansion of radiomic analysis based on low field strength MR images and may hold the potential for providing timely indications of response to treatment.
PURPOSE: The aim of this study was to evaluate the potential and feasibility of radiomic features extracted from low field strength (0.35 T) magnetic resonance images (MRIs) in predicting treatment response for patients with pancreatic cancer undergoing stereotactic body radiotherapy (SBRT). METHODS: Twenty patients with unresected, non-metastatic pancreatic ductal adenocarcinoma (PDAC) were enrolled, all of whom received neoadjuvant chemotherapy followed by five-fraction MR-guided SBRT with a radiation dose range of 33-50 Gy. For each patient, five daily setup scans were acquired from a hybrid 0.35 T MRI/radiotherapy unit. Tumor heterogeneity quantified with radiomic features extracted from the gross tumor volume (GTV) was averaged over the course of treatment. Random forest (RF) and adaptive least absolute shrinkage and selection operator (LASSO) classification models were constructed to identify radiomics features predictive of treatment response. Predictive capability of the top-performing features was then evaluated using the receiver operating characteristic area under curve (AUC) obtained using leave-one-out cross-validation. RESULTS: Half of the 20 patients showed response to treatment, defined by tumor regression on histopathology or tumor response on follow-up dynamic contrast-enhanced computed tomography (CT). The most predictive features selected by the RF method were GLCM energy and GLSZM gray-level variance. The RF-based model achieved an AUC = 0.81 with a 95% confidence interval of [0.594 to 1] The LASSO algorithm selected GLCM energy as the only predictive feature, achieving an AUC = 0.81 with 95% confidence interval of [0.596 to 1]. CONCLUSION: The findings of this study suggest that radiomic features extracted during MR-guided SBRT may contain predictive information about response of PDAC patients to treatment. Using the images acquired during treatment of PDAC patients supports continued expansion of radiomic analysis based on low field strength MR images and may hold the potential for providing timely indications of response to treatment.
Authors: Rodrigo Delgadillo; John C Ford; Matthew C Abramowitz; Alan Dal Pra; Alan Pollack; Radka Stoyanova Journal: Strahlenther Onkol Date: 2020-08-21 Impact factor: 3.621
Authors: Nikolai J Mickevicius; Joshua P Kim; Jiwei Zhao; Zachary S Morris; Newton J Hurst; Carri K Glide-Hurst Journal: Med Phys Date: 2021-09-18 Impact factor: 4.071
Authors: Danilo Maziero; Michael W Straza; John C Ford; Joseph A Bovi; Tejan Diwanji; Radka Stoyanova; Eric S Paulson; Eric A Mellon Journal: Front Oncol Date: 2021-03-08 Impact factor: 6.244
Authors: M R Tomaszewski; K Latifi; E Boyer; R F Palm; I El Naqa; E G Moros; S E Hoffe; S A Rosenberg; J M Frakes; R J Gillies Journal: Radiat Oncol Date: 2021-12-15 Impact factor: 3.481
Authors: Calogero Casà; Antonio Piras; Andrea D'Aviero; Francesco Preziosi; Silvia Mariani; Davide Cusumano; Angela Romano; Ivo Boskoski; Jacopo Lenkowicz; Nicola Dinapoli; Francesco Cellini; Maria Antonietta Gambacorta; Vincenzo Valentini; Gian Carlo Mattiucci; Luca Boldrini Journal: Ther Adv Gastrointest Endosc Date: 2022-03-16
Authors: Garrett Simpson; William Jin; Benjamin Spieler; Lorraine Portelance; Eric Mellon; Deukwoo Kwon; John C Ford; Nesrin Dogan Journal: Front Oncol Date: 2022-04-19 Impact factor: 5.738
Authors: Teresa Guallart-Naval; José M Algarín; Rubén Pellicer-Guridi; Fernando Galve; Yolanda Vives-Gilabert; Rubén Bosch; Eduardo Pallás; José M González; Juan P Rigla; Pablo Martínez; Francisco J Lloris; Jose Borreguero; Álvaro Marcos-Perucho; Vlad Negnevitsky; Luis Martí-Bonmatí; Alfonso Ríos; José M Benlloch; Joseba Alonso Journal: Sci Rep Date: 2022-07-30 Impact factor: 4.996