2022
DOI: 10.1101/2022.08.30.22279394
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Identifying Women with Post-Delivery Posttraumatic Stress Disorder using Natural Language Processing of Personal Childbirth Narratives

Abstract: BackgroundMaternal mental disorders are considered a leading complication of childbirth and a common contributor to maternal death. In addition to undermining maternal welfare, untreated postpartum psychopathology can result in child emotional and physical neglect, and associated significant pediatric health costs. Some women may experience a traumatic childbirth and develop posttraumatic stress disorder (PTSD) symptoms following delivery (CB-PTSD). Although women are routinely screened for postpartum depressi… Show more

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“…Personal narratives differ structurally from fictional stories as they are more likely to be nonlinear but tend to contain more salient events [9]. Researchers have used various methods to understand these types of narratives, including text processing tools, such as word embeddings [10], topic modeling [11,12], sentiment analysis [11], or low-level features like part-of-speech tagging and tokenization [13]. Others rely on annotations for classifying complex aspects of personal narratives, such as identifying the intention of the narrator [11,14] or where there is subjectivity [2,15].…”
Section: Related Workmentioning
confidence: 99%
“…Personal narratives differ structurally from fictional stories as they are more likely to be nonlinear but tend to contain more salient events [9]. Researchers have used various methods to understand these types of narratives, including text processing tools, such as word embeddings [10], topic modeling [11,12], sentiment analysis [11], or low-level features like part-of-speech tagging and tokenization [13]. Others rely on annotations for classifying complex aspects of personal narratives, such as identifying the intention of the narrator [11,14] or where there is subjectivity [2,15].…”
Section: Related Workmentioning
confidence: 99%