Literature DB >> 8700022

Quantification of multiple sclerosis lesion volumes in 1.5 and 0.5 T anisotropically filtered and unfiltered MR exams.

J R Mitchell1, S J Karlik, D H Lee, M Eliasziw, G P Rice, A Fenster.   

Abstract

Recently, guidelines for the use of MRI in the monitoring of MS have recommended the use of imaging systems with mid-field (0.5-1.0 T) or high-field (greater than 1.0 T) strengths. Higher field strengths provide many advantages, including increased signal-to-noise ratios (SNR). SNR also may be increased by post-processing algorithms that reduce noise. In this paper we evaluate the impact on operator variability of (a) lesion quantification in high-field (1.5 T) versus mid-field (0.5 T) exams; and (b) an anisotropic diffusion filter algorithm that reduces image noise without blurring or moving object boundaries. Inter- and intra-operator reliability and variability were studied using repeated quantification of lesions in 1.5 and 0.5 T filtered and unfiltered MR exams of a MS patient. Results indicate that inter-operator variability in 1.5 T unfiltered exams was 0.34 cm3 and was significantly larger than that in 1.5 T filtered (0.27 cm3), 0.5 T unfiltered (0.26 cm3), and 0.5 T filtered (0.24 cm3) exams. Similarly, intra-operator variability in 1.5 T unfiltered exams was 0.23 cm3 and was significantly larger than that in 1.5 T filtered (0.19 cm3), 0.5 T unfiltered (0.19 cm3), and 0.5 T filtered (0.18 cm3) exams. In addition, the minimum significant change between two successive measurements of lesion volume by the same operator, was 0.64 cm3 in 1.5 T unfiltered exams, but 0.53 cm3 or less in other exams. For two different operators making successive measurements, the minimum significant change was 0.94 cm3 in 1.5 T unfiltered exams, but only 0.75 cm3 or less in other exams. Finally, the number of lesions to be monitored for an average change in volume at a given power and significance level was greater by 30%-60% for quantification in 1.5 T unfiltered exams. These results suggest that inter- and intra-operator variability are reduced by anisotropic filtering, and by quantification in 0.5 T exams. Reduced operator variabilities may result from higher detail signal-to-noise ratios (dSNRs) in 0.5 T and filtered exams.

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Year:  1996        PMID: 8700022     DOI: 10.1118/1.597689

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  1 in total

1.  Deep neural network to locate and segment brain tumors outperformed the expert technicians who created the training data.

Authors:  Joseph Ross Mitchell; Konstantinos Kamnitsas; Kyle W Singleton; Scott A Whitmire; Kamala R Clark-Swanson; Sara Ranjbar; Cassandra R Rickertsen; Sandra K Johnston; Kathleen M Egan; Dana E Rollison; John Arrington; Karl N Krecke; Theodore J Passe; Jared T Verdoorn; Alex A Nagelschneider; Carrie M Carr; John D Port; Alice Patton; Norbert G Campeau; Greta B Liebo; Laurence J Eckel; Christopher P Wood; Christopher H Hunt; Prasanna Vibhute; Kent D Nelson; Joseph M Hoxworth; Ameet C Patel; Brian W Chong; Jeffrey S Ross; Jerrold L Boxerman; Michael A Vogelbaum; Leland S Hu; Ben Glocker; Kristin R Swanson
Journal:  J Med Imaging (Bellingham)       Date:  2020-10-16
  1 in total

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