Online physician review (OPR) websites have been increasingly used by healthcare consumers to make informed decisions in selecting healthcare providers. However, consumer-generated online reviews are often unstructured and contain plural topics with varying degrees of granularity, making it challenging to analyze using conventional topic modeling techniques. In this paper, we designed a novel natural language processing pipeline incorporating qualitative coding and supervised and unsupervised machine learning. Using this method, we were able to identify not only coarse-grained topics (e.g., relationship, clinic management), but also fine-grained details such as diagnosis, timing and access, and financial concerns. We discuss how healthcare ...
There are a lot of online reviews on the medical treatments provided by the gynecologists. It will ...
INTRODUCTION: Healthcare organizations are making extensive efforts to improve the patient experienc...
Objectives Unstructured free-text patient feedback contains rich information, and analysing these da...
Online physician review (OPR) websites have been increasingly used by healthcare consumers to make i...
Background: Patients face difficulties identifying appropriate physicians owing to the sizeable quan...
Consumers often learn from others through a social learning process (e.g. electronic word of mouth) ...
(1) Background: The appearance of physician rating websites (PRWs) has raised researchers’ interest ...
Online physician reviews are a massive and potentially rich source of information capturing patient ...
ABSTRACTHealth care is taking its turn in the internet now and online health information consumption...
The present study develops a novel deep learning method which assists text mining of online doctor r...
The development of Web 2.0 techniques has led to the prosperity of online communities, which spread ...
Background: Patients face difficulties identifying appropriate physicians owing to the sizeable quan...
Social media users generate large volumes of data every day. Analysis of this data is an important t...
Background Evaluating patients' experiences is essential when incorporating the patients' perspectiv...
Traditionally, most of the comparative data on public satisfaction with healthcare services come fro...
There are a lot of online reviews on the medical treatments provided by the gynecologists. It will ...
INTRODUCTION: Healthcare organizations are making extensive efforts to improve the patient experienc...
Objectives Unstructured free-text patient feedback contains rich information, and analysing these da...
Online physician review (OPR) websites have been increasingly used by healthcare consumers to make i...
Background: Patients face difficulties identifying appropriate physicians owing to the sizeable quan...
Consumers often learn from others through a social learning process (e.g. electronic word of mouth) ...
(1) Background: The appearance of physician rating websites (PRWs) has raised researchers’ interest ...
Online physician reviews are a massive and potentially rich source of information capturing patient ...
ABSTRACTHealth care is taking its turn in the internet now and online health information consumption...
The present study develops a novel deep learning method which assists text mining of online doctor r...
The development of Web 2.0 techniques has led to the prosperity of online communities, which spread ...
Background: Patients face difficulties identifying appropriate physicians owing to the sizeable quan...
Social media users generate large volumes of data every day. Analysis of this data is an important t...
Background Evaluating patients' experiences is essential when incorporating the patients' perspectiv...
Traditionally, most of the comparative data on public satisfaction with healthcare services come fro...
There are a lot of online reviews on the medical treatments provided by the gynecologists. It will ...
INTRODUCTION: Healthcare organizations are making extensive efforts to improve the patient experienc...
Objectives Unstructured free-text patient feedback contains rich information, and analysing these da...