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MRI-Based Deep Learning Segmentation and Radiomics of Sarcoma in Mice.

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Date
2020-03
Authors
Holbrook, MD
Blocker, SJ
Mowery, YM
Badea, A
Qi, Y
Xu, ES
Kirsch, DG
Johnson, GA
Badea, CT
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Abstract
Small-animal imaging is an essential tool that provides noninvasive, longitudinal insight into novel cancer therapies. However, considerable variability in image analysis techniques can lead to inconsistent results. We have developed quantitative imaging for application in the preclinical arm of a coclinical trial by using a genetically engineered mouse model of soft tissue sarcoma. Magnetic resonance imaging (MRI) images were acquired 1 day before and 1 week after radiation therapy. After the second MRI, the primary tumor was surgically removed by amputating the tumor-bearing hind limb, and mice were followed for up to 6 months. An automatic analysis pipeline was used for multicontrast MRI data using a convolutional neural network for tumor segmentation followed by radiomics analysis. We then calculated radiomics features for the tumor, the peritumoral area, and the 2 combined. The first radiomics analysis focused on features most indicative of radiation therapy effects; the second radiomics analysis looked for features that might predict primary tumor recurrence. The segmentation results indicated that Dice scores were similar when using multicontrast versus single T2-weighted data (0.863 vs 0.861). One week post RT, larger tumor volumes were measured, and radiomics analysis showed greater heterogeneity. In the tumor and peritumoral area, radiomics features were predictive of primary tumor recurrence (AUC: 0.79). We have created an image processing pipeline for high-throughput, reduced-bias segmentation of multiparametric tumor MRI data and radiomics analysis, to better our understanding of preclinical imaging and the insights it provides when studying new cancer therapies.
Type
Journal article
Subject
Animals
Mice
Sarcoma
Soft Tissue Neoplasms
Neoplasm Recurrence, Local
Magnetic Resonance Imaging
Deep Learning
Permalink
https://hdl.handle.net/10161/24250
Published Version (Please cite this version)
10.18383/j.tom.2019.00021
Publication Info
Holbrook, MD; Blocker, SJ; Mowery, YM; Badea, A; Qi, Y; Xu, ES; ... Badea, CT (2020). MRI-Based Deep Learning Segmentation and Radiomics of Sarcoma in Mice. Tomography (Ann Arbor, Mich.), 6(1). pp. 23-33. 10.18383/j.tom.2019.00021. Retrieved from https://hdl.handle.net/10161/24250.
This is constructed from limited available data and may be imprecise. To cite this article, please review & use the official citation provided by the journal.
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Scholars@Duke

Badea

Alexandra Badea

Associate Professor in Radiology
I have a joint appointment in Radiology and Neurology and my research focuses on neurological conditions like Alzheimer’s disease. I work on imaging and analysis to provide a comprehensive characterization of the brain. MRI is particularly suitable for brain imaging, and diffusion tensor imaging is an important tool for studying brain microstructure, and the connectivity amongst gray matter regions.   I am interested in image segmentation, morphometry and shape ana
Badea

Cristian Tudorel Badea

Professor in Radiology
Our lab's research focus lies primarily in developing novel quantitative imaging systems, reconstruction algorithms and analysis methods.  My major expertise is in preclinical CT. Currently, we are particularly interested in developing novel strategies for spectral CT imaging using nanoparticle-based contrast agents for theranostics (i.e. therapy and diagnostics). We are also engaged in developin
Johnson

G. Allan Johnson

Charles E. Putman University Distinguished Professor of Radiology
Dr. Johnson is the Charles E. Putman University Professor of Radiology, Professor of Physics, and Biomedical Engineering, and Director of the Duke Center for In Vivo Microscopy (CIVM). The CIVM is an NIH/NIBIB national Biomedical Technology Resource Center with a mission to develop novel technologies for preclinical imaging (basic sciences) and apply the technologies to critical biomedical questions. Dr. Johnson was one of the first researchers to bring Paul Lauterbur's vision of magnetic resona
Kirsch

David Guy Kirsch

Barbara Levine University Distinguished Professor
My clinical interests are the multi-modality care of patients with bone and soft tissue sarcomas and developing new sarcoma therapies. My laboratory interests include utilizing mouse models of cancer to study cancer and radiation biology in order to develop new cancer therapies in the pre-clinical setting.
Mowery

Yvonne Marie Mowery

Butler Harris Assistant Professor in Radiation Oncology
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