Background: Patient activation is defined as a patient’s confidence and perceived ability to manage their own health. Patient activation has been a consistent predictor of long-term health and care costs, particularly for people with multiple long-term health conditions. However, there is currently no means of measuring patient activation from what is said in health care consultations. This may be particularly important for psychological therapy because most current methods for evaluating therapy content cannot be used routinely due to time and cost restraints. Natural language processing (NLP) has been used increasingly to classify and evaluate the contents of psychological therapy. This aims to make the routine, systematic evaluation of ...
The mental healthcare system requires an improvement in patient accessibility and a decrease in reso...
The cognitive approach to psychotherapy aims to change patients’ maladaptive schemas, that is, overl...
BACKGROUND New advances in the field of machine learning make it possible to track facial emotion...
Many psychological treatments have been shown to be cost-effective and efficacious, as long as they ...
ObjectiveWe describe the development of an instrument aiming to offer interaction‐level feedback bas...
<div><p>The technology for evaluating patient-provider interactions in psychotherapy–observational c...
Among people with serious mental illness, increased patient activation has been linked to a range of...
Objective: We aimed to develop and test an algorithm for individual patient predictions of problem c...
Background: The emerging Artificial Intelligence (AI) based Conversational Agents (CA) capable of de...
Background: Natural speech analytics has seen some improvements over recent years, and this has open...
With increased awareness of mental health disorders, the growing practice of psychotherapy was follo...
Psychotherapy represents a broad class of medical interventions received by millions of patients eac...
Objective. We describe the development of an instrument aiming to offer interaction-level feedback b...
Objectives: Machine learning (ML) and natural language processing have great potential to improve e...
Background: Developing predictive models for precision psychiatry is challenging because of unavaila...
The mental healthcare system requires an improvement in patient accessibility and a decrease in reso...
The cognitive approach to psychotherapy aims to change patients’ maladaptive schemas, that is, overl...
BACKGROUND New advances in the field of machine learning make it possible to track facial emotion...
Many psychological treatments have been shown to be cost-effective and efficacious, as long as they ...
ObjectiveWe describe the development of an instrument aiming to offer interaction‐level feedback bas...
<div><p>The technology for evaluating patient-provider interactions in psychotherapy–observational c...
Among people with serious mental illness, increased patient activation has been linked to a range of...
Objective: We aimed to develop and test an algorithm for individual patient predictions of problem c...
Background: The emerging Artificial Intelligence (AI) based Conversational Agents (CA) capable of de...
Background: Natural speech analytics has seen some improvements over recent years, and this has open...
With increased awareness of mental health disorders, the growing practice of psychotherapy was follo...
Psychotherapy represents a broad class of medical interventions received by millions of patients eac...
Objective. We describe the development of an instrument aiming to offer interaction-level feedback b...
Objectives: Machine learning (ML) and natural language processing have great potential to improve e...
Background: Developing predictive models for precision psychiatry is challenging because of unavaila...
The mental healthcare system requires an improvement in patient accessibility and a decrease in reso...
The cognitive approach to psychotherapy aims to change patients’ maladaptive schemas, that is, overl...
BACKGROUND New advances in the field of machine learning make it possible to track facial emotion...