Index by author
March 01, 2019; Volume 40,Issue 3
Elsayed, M.
- Head & NeckYou have accessDiagnostic Utility of Optic Nerve Measurements with MRI in Patients with Optic Nerve AtrophyB. Zhao, N. Torun, M. Elsayed, A.-D. Cheng, A. Brook, Y.-M. Chang and R.A. BhadeliaAmerican Journal of Neuroradiology March 2019, 40 (3) 558-561; DOI: https://doi.org/10.3174/ajnr.A5975
Enzinger, C.
- Adult BrainOpen AccessQuantitative Susceptibility Mapping to Assess Cerebral Vascular ComplianceC. Birkl, C. Langkammer, P. Sati, C. Enzinger, F. Fazekas and S. RopeleAmerican Journal of Neuroradiology March 2019, 40 (3) 460-463; DOI: https://doi.org/10.3174/ajnr.A5933
Eschbacher, J.M.
- FELLOWS' JOURNAL CLUBAdult BrainOpen AccessAccurate Patient-Specific Machine Learning Models of Glioblastoma Invasion Using Transfer LearningL.S. Hu, H. Yoon, J.M. Eschbacher, L.C. Baxter, A.C. Dueck, A. Nespodzany, K.A. Smith, P. Nakaji, Y. Xu, L. Wang, J.P. Karis, A.J. Hawkins-Daarud, K.W. Singleton, P.R. Jackson, B.J. Anderies, B.R. Bendok, R.S. Zimmerman, C. Quarles, A.B. Porter-Umphrey, M.M. Mrugala, A. Sharma, J.M. Hoxworth, M.G. Sattur, N. Sanai, P.E. Koulemberis, C. Krishna, J.R. Mitchell, T. Wu, N.L. Tran, K.R. Swanson and J. LiAmerican Journal of Neuroradiology March 2019, 40 (3) 418-425; DOI: https://doi.org/10.3174/ajnr.A5981
The authors evaluated tumor cell density using a transfer learning method that generates individualized patient models, grounded in the wealth of population data, while also detecting and adjusting for interpatient variabilities based on each patient's own histologic data. They collected 82 image-recorded biopsy samples, from 18 patients with primary GBM. With multivariate modeling, transfer learning improved performance (r = 0.88) compared with one-model-fits-all (r = 0.39). They conclude that transfer learning significantly improves predictive modeling performance for quantifying tumor cell density in glioblastoma.
In this issue
American Journal of Neuroradiology
Vol. 40, Issue 3
1 Mar 2019
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