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Intellectual disability (ID) is a neurodevelopmental condition characterized by deficits in intellectual and adaptive functioning that manifest during the developmental period. This condition encompasses challenges in reasoning, memory, problem-solving, and learning, accompanied by impairments in everyday life skills, such as communication, self-care, and social interactions. Intellectual disability affects approximately 1% of the population in the United States, impacting an estimated 5...
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Learning disabilities are cognitive disorders caused by neurological impairments that affect cognitive functions like language and reading, without indicating overall intellectual or developmental challenges. These disabilities differ from global intellectual or developmental disabilities as they are limited to distinct cognitive functions. Common learning disabilities include dysgraphia, dyslexia, and dyscalculia, each of which impacts unique aspects of learning.
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Information Extraction Framework for Disability Determination Using a Mental Functioning Use-Case.

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This study introduces a new framework using natural language processing (NLP) to analyze mental health information for disability assessments. It aims to improve how electronic health records inform decisions about work disability and clinical care.

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Area of Science:

  • Computational linguistics and health informatics.
  • Application of artificial intelligence in mental healthcare.
  • Medical informatics and clinical decision support systems.

Background:

  • Natural language processing (NLP) transforms health data but lags in mental health due to complexity.
  • Existing information technologies for mental health are underdeveloped.
  • NLP's potential in mental health management remains largely unexplored.

Purpose of the Study:

  • To present a framework for advanced NLP methods in mental health assessment.
  • To identify, extract, and organize mental health information for decision-making.
  • To inform the disability determination process for work disability claims.

Main Methods:

  • Developed a framework with 4 dimensions: temporal sequence/duration, severity, context, and information source.
  • Applied NLP to extract mental health information relevant to disability claims.
  • Utilized a use-case guided by the US Social Security Administration (SSA) disability process.

Main Results:

  • Identified key aspects and NLP approaches for each of the 4 assessment dimensions.
  • Demonstrated NLP's potential for creating functional timelines and assessing symptom severity.
  • Highlighted gaps in current NLP applications and annotated datasets for mental health.

Conclusions:

  • The proposed NLP framework offers a structured approach to assessing mental health and functioning.
  • Findings will aid SSA adjudicators and have broader relevance for mental health assessments.
  • Significant opportunities exist for NLP in mental health decision-making beyond disability claims.