Deep learning based analysis of sentiment dynamics in online cancer community forums: An experience.
Athira BalakrishnanSumam Mary IdiculaJosette JonesPublished in: Health informatics journal (2021)
Online health communities (OHC) provide various opportunities for patients with chronic or life-threatening illnesses, especially for cancer patients and survivors. A better understanding of the sentiment dynamics of patients in OHCs can help in the precise formulation of the needs during their treatment. The current study investigated the sentiment dynamics in patients' narratives in a Breast Cancer community group (Breastcancer.org) to identify the changes in emotions, thoughts, stress, and coping mechanisms while undergoing treatment options, particularly chemotherapy, radiation, and surgery. Sentiment dynamics of users' posts was performed using a deep learning model. A sentiment change analysis was performed to measure change in the satisfaction level of the users. The deep learning model BiLSTM with sentiment embedding features provided a better F1-score of 91.9%. Sentiment dynamics can assess the difference in satisfaction level the users acquire by interacting with other users in the forum. A comparison of the proposed model with existing models revealed the effectiveness of this methodology.
Keyphrases
- deep learning
- end stage renal disease
- ejection fraction
- newly diagnosed
- mental health
- chronic kidney disease
- machine learning
- health information
- minimally invasive
- artificial intelligence
- drug delivery
- social media
- risk assessment
- depressive symptoms
- convolutional neural network
- squamous cell carcinoma
- patient reported outcomes
- acute coronary syndrome
- coronary artery disease
- human health
- high speed
- health promotion
- squamous cell
- lymph node metastasis
- locally advanced
- percutaneous coronary intervention