A New Metric for Detecting Change in Slowly Evolving Brain Tumors: Validation in Meningioma Patients

Author:

Pohl Kilian M.1,Konukoglu Ender2,Novellas Sebastian3,Ayache Nicholas3,Fedorov Andriy4,Talos Ion-Florin4,Golby Alexandra5,Wells William M.4,Kikinis Ron4,Black Peter M.5

Affiliation:

1. Section of Biomedical Image Analysis, Department of Radiology, University of Pennsylvania, Philadelphia, Pennsylvania

2. Microsoft Research Cambridge, Cambridge, United Kingdom

3. Asclepios Research Project, INRIA, Sophia Antipolis, France

4. Surgical Planning Lab, Department of Radiology, Brigham & Women's Hospital, Harvard Medical School, Boston, Massachusetts

5. Department of Neurosurgery, Brigham & Women's Hospital, Harvard Medical School, Boston, Massachusetts

Abstract

Abstract BACKGROUND: Change detection is a critical component in the diagnosis and monitoring of many slowly evolving pathologies. OBJECTIVE: This article describes a semiautomatic monitoring approach using longitudinal medical images. We test the method on brain scans of patients with meningioma, which experts have found difficult to monitor because the tumor evolution is very slow and may be obscured by artifacts related to image acquisition. METHODS: We describe a semiautomatic procedure targeted toward identifying difficult-to-detect changes in brain tumor imaging. The tool combines input from a medical expert with state-of-the-art technology. The software is easy to calibrate and, in less than 5 minutes, returns the total volume of tumor change in mm3. We test the method on postgadolinium, T1-weighted magnetic resonance images of 10 patients with meningioma and compare our results with experts' findings. We also perform benchmark testing with synthetic data. RESULTS: Our experiments indicated that experts' visual inspections are not sensitive enough to detect subtle growth. Measurements based on experts' manual segmentations were highly accurate but also labor intensive. The accuracy of our approach was comparable to the experts' results. However, our approach required far less user input and generated more consistent measurements. CONCLUSION: The sensitivity of experts' visual inspection is often too low to detect subtle growth of meningiomas from longitudinal scans. Measurements based on experts' segmentation are highly accurate but generally too labor intensive for standard clinical settings. We described an alternative metric that provides accurate and robust measurements of subtle tumor changes while requiring a minimal amount of user input.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Neurology (clinical),Surgery

Reference27 articles.

1. Central Brain Tumor Registry of the United States;CBTRUS 2007–2008: Primary Brain Tumors in the United States Statistical Report 2000-2004

2. Epidemiology of intracranial meningioma;Claus;Neurosurgery,2005

3. Meningiomas;Perry,2007

4. Growth pattern changes of meningiomas: long-term analysis;Nakasu;Neurosurgery,2005

5. The natural history of untreated skull base meningiomas;Bindal;Surg Neurol,2003

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