Changes for page Neurodiagnoses
Last modified by manuelmenendez on 2025/03/03 22:46
From version 45.1
edited by manuelmenendez
on 2025/02/08 17:20
on 2025/02/08 17:20
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To version 42.1
edited by manuelmenendez
on 2025/02/02 20:53
on 2025/02/02 20:53
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... ... @@ -18,22 +18,27 @@ 18 18 = **Overview** = 19 19 20 20 21 -The classification and diagnosis of central nervous system (CNS) diseases have long been constrained by traditional ,phenotype-based approachesthatoften fail to capture the complexinterplay of pathophysiological mechanisms, molecular biomarkers, and neuroanatomical changes.Neurodiagnoses redefinesthis landscape by integratingadvancedAI with multi-modal data—including genetics, neuroimaging, biomarkers, and digital healthrecords—to create a more precise,scalable, and data-driven diagnostic system.21 +The classification and diagnosis of central nervous system (CNS) diseases have long been constrained by traditional phenotype-based approaches, which often fail to capture the complex pathophysiological mechanisms, molecular biomarkers, and neuroanatomical changes that drive disease progression. 22 22 23 - In addition to these clinical diagnostic approaches,Neurodiagnoseshasexpandedintoa research-orientedplatformthroughthe integrationof**CNSDigital Twins**. This cutting-edgeconceptnvolvescreating a personalizeddigital replicaf apatient’sCNS by incorporatingmulti-omicsdata (proteomics, genomics,lipidomics,transcriptomics),variousneuroimagingmodalities, anddigitalhealthinformation.Thesedigitaltwinsenablesimulationsofdiseaseprogression,supportthediscoveryofnovel biomarkers, andhelpidentify new therapeutictargets.23 +Neurodiagnoses is an open-source AI-powered diagnostic system designed for complex CNS disorders, including neurodegenerative diseases, autoimmune encephalopathies, prion disorders, and genetic syndromes. The project aims to develop a tridimensional diagnostic framework with an AI-powered annotation system, integrating etiology, molecular biomarkers, and neuroanatomoclinical correlations for precise, standardized, and scalable CNS disease diagnostics. 24 24 25 - On thispage,youwillfind:25 +The //Tridimensional Diagnostic Framework// redefines CNS diseases can be classified and diagnosed by focusing on: 26 26 27 -* Detailed descriptions of both the clinical diagnostic tools and the research framework. 28 -* Access to our AI models, data processing pipelines, and digital twin simulations. 29 -* Collaborative resources for researchers, clinicians, and AI developers. 30 -* Guidelines and instructions on how to contribute to and expand the project. 27 +* **Axis 1**: Etiology (genetic or other causes of diseases). 28 +* **Axis 2**: Molecular Markers (biomarkers). 29 +* **Axis 3**: Neuroanatomoclinical correlations (linking clinical symptoms to structural changes in the nervous system). 31 31 31 +This methodology enables: 32 + 33 +* Greater precision in diagnosis. 34 +* Integration of incomplete datasets using AI-driven probabilistic modeling. 35 +* Stratification of patients for personalized treatment. 36 + 32 32 == **The role of AI-powered annotation** == 33 33 34 34 To enhance standardization, interpretability, and clinical application, the framework integrates an AI-powered annotation system, which: 35 35 36 -* Assign structured metadata tags to diagnostic features. 41 +* Assigns structured metadata tags to diagnostic features. 37 37 * Provides real-time contextual explanations for AI-based classifications. 38 38 * Tracks longitudinal disease progression using timestamped AI annotations. 39 39 * Improves AI model transparency through interpretability tools (e.g., SHAP analysis). ... ... @@ -44,6 +44,10 @@ 44 44 1. Traditional Probabilistic Diagnosis 45 45 46 46 * AI provides multiple possible diagnoses, each assigned a probability percentage based on biomarker, imaging, and clinical data. 52 +* Example Output: 53 +** 75% Alzheimer's Disease 54 +** 20% Lewy Body Dementia 55 +** 5% Vascular Dementia 47 47 * Useful for differential diagnosis and treatment decision-making. 48 48 49 49 2. Tridimensional Diagnosis ... ... @@ -52,9 +52,9 @@ 52 52 (1) Etiology (genetic, autoimmune, metabolic, infectious) 53 53 (2) Molecular Biomarkers (amyloid-beta, tau, inflammatory markers, EEG patterns) 54 54 (3) Neuroanatomoclinical Correlations (brain atrophy, connectivity alterations) 55 -* This approach enables precise disease subtyping and biologically meaningful classification, particularly useful fortrackingprogression over time.64 +* This approach enables precise disease subtyping and biologically meaningful classification, particularly useful to track progression over time. 56 56 57 - Both systems will be offeredfor every patient case, allowing clinicians to compare AI-generated probabilistic diagnosis with a structured tridimensional classification.66 +For every patient case, both systems will be offered, allowing clinicians to compare AI-generated probabilistic diagnosis with a structured tridimensional classification. 58 58 59 59 60 60 == **The case of neurodegenerative diseases** == ... ... @@ -101,7 +101,6 @@ 101 101 * Access the `/docs` folder for guidelines. 102 102 * Use `/code` for the latest AI pipelines. 103 103 * Share feedback and ideas in the wiki discussion pages. 104 -* Join the [[Discussion Forum at GitHub>>https://github.com/Fundacion-de-Neurociencias/neurodiagnoses/discussions]] 105 105 106 106 == Key Objectives == 107 107 ... ... @@ -114,7 +114,7 @@ 114 114 115 115 == Who has access? == 116 116 117 -We welcome contributions from the global community. Join us as we transform CNS diagnostics and drive precision medicine forward through a collaborative, open-source approach.Let’s build the future of neurological diagnostics together!125 +We welcome contributions from the global community. Let’s build the future of neurological diagnostics together! 118 118 ))) 119 119 120 120