Artificial intelligence (AI)-based medical diagnostic applications are on the rise. Our recent study has suggested an explainable deep neural network (EDNN) framework for identifying key structural deficits related to the pathology of schizophrenia. Here, we presented an AI-based web diagnostic system for schizophrenia under the EDNN framework with three-dimensional (3D) visualization of subjects' neuroimaging dataset. This AI-based web diagnostic system consisted of a web server and a neuroimaging diagnostic database. The web server deployed the EDNN algorithm under the Node.js environment. Feature selection and network model building were performed on the dataset obtained from two hundred schizophrenic patients and healthy controls in the Taiwan Aging and Mental Illness (TAMI) cohort. We included an independent cohort with 88 schizophrenic patients and 44 healthy controls recruited at Tri-Service General Hospital Beitou Branch for validation purposes. Our AI-based web diagnostic system achieved 84.00% accuracy (89.47% sensitivity, 80.62% specificity) for gray matter (GM) and 90.22% accuracy (89.21% sensitivity, 91.23% specificity) for white matter (WM) on the TAMI cohort. For the Beitou cohort as an unseen test set, the model achieved 77.27 and 70.45% accuracy for GM and WM. Furthermore, it achieved 85.50 and 88.20% accuracy after model retraining to mitigate the effects of drift on the predictive capability. Moreover, our system visualized the identified voxels in brain atrophy in a 3D manner with patients' structural image, optimizing the evaluation process of the diagnostic results. Together, our approach under the EDNN framework demonstrated the potential future direction of making a schizophrenia diagnosis based on structural brain imaging data. Our deep learning model is explainable, arguing for the accuracy of the key information related to the pathology of schizophrenia when using the AI-based web assessment platform. The rationale of this approach is in accordance with the Research Domain Criteria suggested by the National Institute of Mental Health.
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http://dx.doi.org/10.3389/fpsyt.2020.542394 | DOI Listing |
Alzheimers Dement
December 2024
University of California San Francisco (UCSF), San Francisco, CA, USA; Northern California Institute for Research & Education (NCIRE), San Francisco, CA, USA; San Francisco Veterans Administration Medical Center (SFVAMC), San Francisco, CA, CA, USA.
The Alzheimer's Disease Neuroimaging Initiative (ADNI) has made many important contributions to the development of Alzheimer's Disease (AD) disease modifying treatments and diagnostic biomarkers. Since its funding in 2004 by the National Institutes of Aging, the goal of ADNI has been the validation of biomarkers for AD treatment trials. ADNI has enrolled over 2,400 participants in the USA and Canada for longitudinal clinical, cognitive, and biomarker studies.
View Article and Find Full Text PDFBackground: A 73-year-old female with a 3 year history of Alzheimer's disease was treated within the protocol of The Alzheimer's Autism and Cognitive Impairment Stem Cell Treatment Study (ACIST), an IRB approved clinical study registered with clinicaltrials.gov NCT03724136.
Method: The procedure consists of bone marrow aspiration, cell separation using an FDA cleared class 2 device, and intravenous and intranasal administration of the stem cell fraction.
Alzheimers Dement
December 2024
Department of Clinical, Educational, and Health Psychology, Division of Psychology and Language Sciences, University College London, London, United Kingdom.
Background: How people affected by non-memory-led and inherited dementias (NMLDs) interact with online health resources is poorly understood. We conducted the world's largest survey exploring 'digital access in non-memory-led dementias' to learn directly from people with NMLD, their care partners and NMLD Healthcare Professionals (HCPs) about the NMLD experience interacting with web-based health resources.
Method: Four surveys [for individuals diagnosed with NMLD, care partners, care partner proxy for person with NMLD, HCP proxy] were co-developed with people with NMLD experience.
Alzheimers Dement
December 2024
Department of Neurology, Mayo Clinic, Rochester, MN, USA.
Background: Frontotemporal degeneration (FTD) is an umbrella term encompassing a range of rare neurodegenerative disorders that cause progressive changes to behavior, personality, language, and movement with onset typically before age 60. Currently, several potential FTD therapies are under investigation, underscoring the need for increased diversity in research participation. Two validated scores describe socioeconomic and geographic factors that may impact willingness to participate in research.
View Article and Find Full Text PDFAnat Sci Educ
January 2025
Faculty of Engineering, University of Porto, Porto, Portugal.
Histology is a preclinical subject transversal in medical, dental, and veterinary curricula. Classical teaching approaches in histology are often undermined by lower motivation and engagement of students, which may be addressed by innovative learning environments. Herein, we developed a serious game approach and compared it with a classical teaching style.
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