Index by author
Hancu, I.
- FELLOWS' JOURNAL CLUBAdult BrainYou have accessA Deep Learning–Based Approach to Reduce Rescan and Recall Rates in Clinical MRI ExaminationsA. Sreekumari, D. Shanbhag, D. Yeo, T. Foo, J. Pilitsis, J. Polzin, U. Patil, A. Coblentz, A. Kapadia, J. Khinda, A. Boutet, J. Port and I. HancuAmerican Journal of Neuroradiology February 2019, 40 (2) 217-223; DOI: https://doi.org/10.3174/ajnr.A5926
The purpose of this study was to develop a fast, automated method for assessing rescan need in motion-corrupted brain series. A deep learning–based approach was developed, outputting a probability for a series to be clinically useful. Comparison of this per-series probability with a threshold, which can depend on scan indication and reading radiologist, determines whether a series needs to be rescanned. The deep learning classification performance was compared with that of 4 technologists and 5 radiologists in 49 test series with low and moderate motion artifacts. Fast, automated deep learning–based image-quality rating can decrease rescan and recall rates, while rendering them technologist-independent. It was estimated that decreasing rescans and recalls from the technologists' values to the values of deep learning could save hospitals $24,000/scanner/year.
Hantus, S.
- Adult BrainYou have accessFDG-PET and MRI in the Evolution of New-Onset Refractory Status EpilepticusT. Strohm, C. Steriade, G. Wu, S. Hantus, A. Rae-Grant and M. LarvieAmerican Journal of Neuroradiology February 2019, 40 (2) 238-244; DOI: https://doi.org/10.3174/ajnr.A5929
Haruyama, T.
- Adult BrainOpen AccessEffect of Gadolinium on the Estimation of Myelin and Brain Tissue Volumes Based on Quantitative Synthetic MRIT. Maekawa, A. Hagiwara, M. Hori, C. Andica, T. Haruyama, M. Kuramochi, M. Nakazawa, S. Koshino, R. Irie, K. Kamagata, A. Wada, O. Abe and S. AokiAmerican Journal of Neuroradiology February 2019, 40 (2) 231-237; DOI: https://doi.org/10.3174/ajnr.A5921
Hattori, N.
- EDITOR'S CHOICEAdult BrainOpen AccessImproving the Quality of Synthetic FLAIR Images with Deep Learning Using a Conditional Generative Adversarial Network for Pixel-by-Pixel Image TranslationA. Hagiwara, Y. Otsuka, M. Hori, Y. Tachibana, K. Yokoyama, S. Fujita, C. Andica, K. Kamagata, R. Irie, S. Koshino, T. Maekawa, L. Chougar, A. Wada, M.Y. Takemura, N. Hattori and S. AokiAmerican Journal of Neuroradiology February 2019, 40 (2) 224-230; DOI: https://doi.org/10.3174/ajnr.A5927
Forty patients with MS were prospectively included and scanned (3T) to acquire synthetic MR imaging and conventional FLAIR images. Synthetic FLAIR images were created with the SyMRI software. Acquired data were divided into 30 training and 10 test datasets. A conditional generative adversarial network was trained to generate improved FLAIR images from raw synthetic MR imaging data using conventional FLAIR images as targets. The peak signal-to-noise ratio, normalized root mean square error, and the Dice index of MS lesion maps were calculated for synthetic and deep learning FLAIR images against conventional FLAIR images, respectively. Lesion conspicuity and the existence of artifacts were visually assessed. The peak signal-to-noise ratio and normalized root mean square error were significantly higher and lower, respectively, in generated-versus-synthetic FLAIR images in aggregate intracranial tissues and all tissue segments. The Dice index of lesion maps and visual lesion conspicuity were comparable between generated and synthetic FLAIR images. Using deep learning, the authors conclude that they improved the synthetic FLAIR image quality by generating FLAIR images that have contrast closer to that of conventional FLAIR images and fewer granular and swelling artifacts, while preserving the lesion contrast.
Hatzoglou, V.
- FunctionalOpen AccessResting-State Functional Connectivity of the Middle Frontal Gyrus Can Predict Language Lateralization in Patients with Brain TumorsS. Gohel, M.E. Laino, G. Rajeev-Kumar, M. Jenabi, K. Peck, V. Hatzoglou, V. Tabar, A.I. Holodny and B. VachhaAmerican Journal of Neuroradiology February 2019, 40 (2) 319-325; DOI: https://doi.org/10.3174/ajnr.A5932
Herweh, C.
- InterventionalYou have accessClinical Outcome after Thrombectomy in Patients with Stroke with Premorbid Modified Rankin Scale Scores of 3 and 4: A Cohort Study with 136 PatientsF. Seker, J. Pfaff, S. Schönenberger, C. Herweh, S. Nagel, P.A. Ringleb, M. Bendszus and M.A. MöhlenbruchAmerican Journal of Neuroradiology February 2019, 40 (2) 283-286; DOI: https://doi.org/10.3174/ajnr.A5920
Hilditch, C.A.
- SpineYou have accessSingle-Needle Lateral Sacroplasty TechniqueP.J. Nicholson, C.A. Hilditch, W. Brinjikji, A.C.O. Tsang and R. SmithAmerican Journal of Neuroradiology February 2019, 40 (2) 382-385; DOI: https://doi.org/10.3174/ajnr.A5884
Hillen, T.J.
- InterventionalYou have accessPercutaneous CT-Guided Skull Biopsy: Feasibility, Safety, and Diagnostic YieldA. Tomasian, T.J. Hillen and J.W. JenningsAmerican Journal of Neuroradiology February 2019, 40 (2) 309-312; DOI: https://doi.org/10.3174/ajnr.A5949
Hoffman, D.
- PediatricsYou have accessVolumetric MRI Study of the Brain in Fetuses with Intrauterine Cytomegalovirus Infection and Its Correlation to Neurodevelopmental OutcomeA. Grinberg, E. Katorza, D. Hoffman, R. Ber, A. Mayer and S. LipitzAmerican Journal of Neuroradiology February 2019, 40 (2) 353-358; DOI: https://doi.org/10.3174/ajnr.A5948
Holodny, A.I.
- FunctionalOpen AccessResting-State Functional Connectivity of the Middle Frontal Gyrus Can Predict Language Lateralization in Patients with Brain TumorsS. Gohel, M.E. Laino, G. Rajeev-Kumar, M. Jenabi, K. Peck, V. Hatzoglou, V. Tabar, A.I. Holodny and B. VachhaAmerican Journal of Neuroradiology February 2019, 40 (2) 319-325; DOI: https://doi.org/10.3174/ajnr.A5932