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Browsing by Author "Edlow, Brian L."
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Item Comparison of Common Outcome Measures for Assessing Independence in Patients Diagnosed with Disorders of Consciousness: A Traumatic Brain Injury Model Systems Study(Mary Ann Liebert, 2022) Snider, Samuel B.; Kowalski, Robert G.; Hammond, Flora M.; Izzy, Saef; Shih, Shirley L.; Rovito, Craig; Edlow, Brian L.; Zafonte, Ross D.; Giacino, Joseph T.; Bodien, Yelena G.; Physical Medicine and Rehabilitation, School of MedicinePatients with disorders of consciousness (DoC) after traumatic brain injury (TBI) recover to varying degrees of functional dependency. Dependency is difficult to measure but critical for interpreting clinical trial outcomes and prognostic counseling. In participants with DoC (i.e., not following commands) enrolled in the TBI Model Systems National Database (TBIMS NDB), we used the Functional Independence Measure (FIM®) as the reference to evaluate how accurately the Glasgow Outcome Scale-Extended (GOSE) and Disability Rating Scale (DRS) assess dependency. Using the established FIM-dependency cut-point of <80, we measured the classification performance of literature-derived GOSE and DRS cut-points at 1-year post-injury. We compared the area under the receiver operating characteristic curve (AUROC) between the DRSDepend, a DRS-derived marker of dependency, and the data-derived optimal GOSE and DRS cut-points. Of 18,486 TBIMS participants, 1483 met inclusion criteria (mean [standard deviation (SD)] age = 38 [18] years; 76% male). The sensitivity of GOSE cut-points of ≤3 and ≤4 (Lower Severe and Upper Severe Disability, respectively) for identifying FIM-dependency were 97% and 98%, but specificities were 73% and 51%, respectively. The sensitivity of the DRS cut-point of ≥12 (Severe Disability) for identifying FIM-dependency was 60%, but specificity was 100%. The DRSDepend had a sensitivity of 83% and a specificity of 94% for classifying FIM-dependency, with a greater AUROC than the data-derived optimal GOSE (≤3, p = 0.01) and DRS (≥10, p = 0.008) cut-points. Commonly used GOSE and DRS cut-points have limited specificity or sensitivity for identifying functional dependency. The DRSDepend identifies FIM-dependency more accurately than the GOSE and DRS cut-points, but requires further validation.Item Predicting Functional Dependency in Patients with Disorders of Consciousness: A TBI-Model Systems and TRACK-TBI Study(Wiley, 2023) Snider, Samuel B.; Temkin, Nancy R.; Barber, Jason; Edlow, Brian L.; Giacino, Joseph T.; Hammond, Flora M.; Izzy, Saef; Kowalski, Robert G.; Markowitz, Amy J.; Rovito, Craig A.; Shih, Shirley L.; Zafonte, Ross D.; Manley, Geoffrey T.; Bodien, Yelena G.; TRACK-TBI investigators; Physical Medicine and Rehabilitation, School of MedicineObjective: It is not currently possible to predict long-term functional dependency in patients with disorders of consciousness (DoC) after traumatic brain injury (TBI). Our objective was to fit and externally validate a prediction model for 1-year dependency in patients with DoC ≥ 2 weeks after TBI. Methods: We included adults with TBI enrolled in TBI Model Systems (TBI-MS) or Transforming Research and Clinical Knowledge in TBI (TRACK-TBI) studies who were not following commands at rehabilitation admission or 2 weeks post-injury, respectively. We fit a logistic regression model in TBI-MS and validated it in TRACK-TBI. The primary outcome was death or dependency at 1 year post-injury, defined using the Disability Rating Scale. Results: In the TBI-MS Discovery Sample, 1,960 participants (mean age 40 [18] years, 76% male, 68% white) met inclusion criteria, and 406 (27%) were dependent 1 year post-injury. In a TBI-MS held out cohort, the dependency prediction model's area under the receiver operating characteristic curve was 0.79 (95% CI 0.74-0.85), positive predictive value was 53% and negative predictive value was 86%. In the TRACK-TBI external validation (n = 124, age 40 [16] years, 77% male, 81% white), the area under the receiver operating characteristic curve was 0.66 (0.53, 0.79), equivalent to the standard IMPACTcore + CT score (p = 0.8). Interpretation: We developed a 1-year dependency prediction model using the largest existing cohort of patients with DoC after TBI. The sensitivity and negative predictive values were greater than specificity and positive predictive values. Accuracy was diminished in an external sample, but equivalent to the IMPACT model. Further research is needed to improve dependency prediction in patients with DoC after TBI.Item Proceedings of the Second Curing Coma Campaign NIH Symposium: Challenging the Future of Research for Coma and Disorders of Consciousness(Springer, 2022) Mainali, Shraddha; Aiyagari, Venkatesh; Alexander, Sheila; Bodien, Yelena; Boerwinkle, Varina; Boly, Melanie; Brown, Emery; Brown, Jeremy; Claassen, Jan; Edlow, Brian L.; Fink, Ericka L.; Fins, Joseph J.; Foreman, Brandon; Frontera, Jennifer; Geocadin, Romergryko G.; Giacino, Joseph; Gilmore, Emily J.; Gosseries, Olivia; Hammond, Flora; Helbok, Raimund; Hemphill, J. Claude; Hirsch, Karen; Kim, Keri; Laureys, Steven; Lewis, Ariane; Ling, Geoffrey; Livesay, Sarah L.; McCredie, Victoria; McNett, Molly; Menon, David; Molteni, Erika; Olson, DaiWai; O’Phelan, Kristine; Park, Soojin; Polizzotto, Len; Provencio, Jose Javier; Puybasset, Louis; Venkatasubba Rao, Chethan P.; Robertson, Courtney; Rohaut, Benjamin; Rubin, Michael; Sharshar, Tarek; Shutter, Lori; Silva, Gisele Sampaio; Smith, Wade; Steven, Robert D.; Thibaut, Aurore; Vespa, Paul; Wagner, Amy K.; Ziai, Wendy C.; Zink, Elizabeth; Suarez, Jose I.; Physical Medicine and Rehabilitation, School of MedicineThis proceedings article presents actionable research targets on the basis of the presentations and discussions at the 2nd Curing Coma National Institutes of Health (NIH) symposium held from May 3 to May 5, 2021. Here, we summarize the background, research priorities, panel discussions, and deliverables discussed during the symposium across six major domains related to disorders of consciousness. The six domains include (1) Biology of Coma, (2) Coma Database, (3) Neuroprognostication, (4) Care of Comatose Patients, (5) Early Clinical Trials, and (6) Long-term Recovery. Following the 1st Curing Coma NIH virtual symposium held on September 9 to September 10, 2020, six workgroups, each consisting of field experts in respective domains, were formed and tasked with identifying gaps and developing key priorities and deliverables to advance the mission of the Curing Coma Campaign. The highly interactive and inspiring presentations and panel discussions during the 3-day virtual NIH symposium identified several action items for the Curing Coma Campaign mission, which we summarize in this article.Item Tractography-Pathology Correlations in Traumatic Brain Injury: A TRACK-TBI Study(Mary Ann Liebert, 2021) Nolan, Amber L.; Petersen, Cathrine; Iacono, Diego; Mac Donald, Christine L.; Mukherjee, Pratik; van der Kouwe, Andre; Jain, Sonia; Stevens, Allison; Diamond, Bram R.; Wang, Ruopeng; Markowitz, Amy J.; Fischl, Bruce; Perl, Daniel P.; Manley, Geoffrey T.; Keene, C. Dirk; Diaz-Arrastia, Ramon; Edlow, Brian L.; TRACK-TBI Investigators; Psychiatry, School of MedicineDiffusion tractography magnetic resonance imaging (MRI) can infer changes in network connectivity in patients with traumatic brain injury (TBI), but the pathological substrates of disconnected tracts have not been well defined because of a lack of high-resolution imaging with histopathological validation. We developed an ex vivo MRI protocol to analyze tract terminations at 750-μm isotropic resolution, followed by histopathological evaluation of white matter pathology, and applied these methods to a 60-year-old man who died 26 days after TBI. Analysis of 74 cerebral hemispheric white matter regions revealed a heterogeneous distribution of tract disruptions. Associated histopathology identified variable white matter injury with patchy deposition of amyloid precursor protein (APP), loss of neurofilament-positive axonal processes, myelin dissolution, astrogliosis, microgliosis, and perivascular hemosiderin-laden macrophages. Multiple linear regression revealed that tract disruption strongly correlated with the density of APP-positive axonal swellings and neurofilament loss. Ex vivo diffusion MRI can detect tract disruptions in the human brain that reflect axonal injury.