Analyzing Perceptions of Maternal and Pediatric Care in Jakarta: An Integrated VADER and GloVe Analysis of Google Reviews in Mother and Child Hospitals

Gilang Al Qarana - IKIFA College of Health Science, East Jakarta, Jakarta, Indonesia
Leonov Rianto - IKIFA College of Health Science, East Jakarta, Jakarta, Indonesia
Charles Charles - IKIFA College of Health Science, East Jakarta, Jakarta, Indonesia
Lorio Purnomo - Bina Nusantara University, Jakarta, Indonesia


Citation Format:



DOI: http://dx.doi.org/10.62527/joiv.9.1.2551

Abstract


In the rapidly digitizing landscape of healthcare feedback, online reviews have become a vital source of patient-reported experiences. This study leverages sentiment analysis to decode the narrative content of Google reviews for Mother and Child Hospitals in Jakarta. Utilizing the VADER sentiment analysis tool and GloVe for keyword extraction, the research aimed to correlate qualitative sentiment with quantitative star ratings. This study meticulously processed and analyzed a selection of Google reviews using VADER for sentiment scoring and GloVe for refining the focus on relevant healthcare discussions. This methodological approach allowed for a comprehensive sentiment assessment of the reviews. The analysis revealed a prevalent positive sentiment in higher-rated reviews and negative sentiment in lower-rated reviews, with notable anomalies that underscore the complexity of patient experiences and perceptions. Specific aspects of care, including staff behavior, facility quality, and treatment efficacy, were recurrent themes in the feedback. These findings highlight the potential of patient-reported experiences in shaping healthcare practices and policy. The study emphasizes the importance of healthcare providers understanding and responding to patient feedback to improve care quality. Limitations such as the representativeness of online reviews and the challenges of sentiment analysis in capturing nuanced emotions are discussed. This study offers valuable insights into patient perceptions of maternal and pediatric care in Jakarta, affirming the significance of leveraging online reviews for healthcare quality monitoring and improvement

Keywords


Maternal Care; Pediatric Care; Healthcare Perceptions; Sentiment Analysis; GloVe; VADER.

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References


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