Psychotherapy represents a broad class of medical interventions received by millions of patients each year. Unlike most medical treatments, its primary mechanisms are linguistic; i.e., the treatment relies directly on a conversation between a patient and provider. However, the evaluation of patient-provider conversation suffers from critical shortcomings, including intensive labor requirements, coder error, nonstandardized coding systems, and inability to scale up to larger data sets. To overcome these shortcomings, psychotherapy analysis needs a reliable and scalable method for summarizing the content of treatment encounters. We used a publicly available psychotherapy corpus from Alexander Street press comprising a large collection of tran...
In this work, we compare different neural topic modeling methods in learning the topical propensitie...
2018-08-01Modeling human behavior in conversational interactions is a complex and challenging task. ...
Objective: The goal of this research is to develop a machine learning supervised classification mode...
In psychotherapy, the patient–provider interaction contains the treatment’s active ingredients. Howe...
The full comprehension of how topics change within psychotherapeutic conversation is key for assessm...
Many psychological treatments have been shown to be cost-effective and efficacious, as long as they ...
Within-session language used by clients and/or therapists can reveal clinically meaningful processes...
Background: Patient activation is defined as a patient’s confidence and perceived ability to manage...
This work focuses on analyzing psychotherapy sessions within the DeePsy research project. This work ...
The authors propose a method for analyzing the psychotherapy process: discourse flow analysis (DFA)....
The text mining of clinical transcripts is broadly used in psychotherapy research, but is limited to...
This paper illustrates an analytical approach combining LIWC, a computer text-analytic application, ...
The authors propose a method for analyzing the psychotherapy process: discourse flow analysis (DFA)....
One of the key aspects in a psychotherapeutic conversation is the understanding of topics dynamics d...
There is a growing interest in topic modeling to decipher the valuable information embedded in natur...
In this work, we compare different neural topic modeling methods in learning the topical propensitie...
2018-08-01Modeling human behavior in conversational interactions is a complex and challenging task. ...
Objective: The goal of this research is to develop a machine learning supervised classification mode...
In psychotherapy, the patient–provider interaction contains the treatment’s active ingredients. Howe...
The full comprehension of how topics change within psychotherapeutic conversation is key for assessm...
Many psychological treatments have been shown to be cost-effective and efficacious, as long as they ...
Within-session language used by clients and/or therapists can reveal clinically meaningful processes...
Background: Patient activation is defined as a patient’s confidence and perceived ability to manage...
This work focuses on analyzing psychotherapy sessions within the DeePsy research project. This work ...
The authors propose a method for analyzing the psychotherapy process: discourse flow analysis (DFA)....
The text mining of clinical transcripts is broadly used in psychotherapy research, but is limited to...
This paper illustrates an analytical approach combining LIWC, a computer text-analytic application, ...
The authors propose a method for analyzing the psychotherapy process: discourse flow analysis (DFA)....
One of the key aspects in a psychotherapeutic conversation is the understanding of topics dynamics d...
There is a growing interest in topic modeling to decipher the valuable information embedded in natur...
In this work, we compare different neural topic modeling methods in learning the topical propensitie...
2018-08-01Modeling human behavior in conversational interactions is a complex and challenging task. ...
Objective: The goal of this research is to develop a machine learning supervised classification mode...