One of the first problems confronting infant language learners is word segmentation: discovering the boundaries between words. Prior research suggests that 8-month-old infants can detect the statistical patterns that serve as a cue to word boundaries. However, the representational structure of the output of this learning process is unknown. This research assessed the extent to which statistical learning generates novel word-like units, rather than probabilistically-related strings of sounds. Eight-month-old infants were familiarized with a continuous stream of nonsense words with no acoustic cues to word boundaries. A post-familiarization test compared the infants' responses to words versus part-words (sequences spanning a word boundary) embedded either in simple English contexts familiar to the infants (e.g. "I like my tibudo"), or in matched nonsense frames (e.g. "zy fike ny tibudo"). Listening preferences were affected by the context (English versus nonsense) in which the items from the familiarization phase were embedded during testing. A second experiment confirmed that infants can discriminate the simple English contexts and the matched nonsense frames used in Experiment 1. The third experiment replicated the results of Experiment 1 by contrasting the English test frames with non-linguistic frames generated from tone sequences. The results support the hypothesis that statistical learning mechanisms generate word-like units with some status relative to the native language.
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Int J Gynaecol Obstet
January 2025
Saving Mothers, New York, New York, USA.
Objective: Guatemala has one of the highest rates of maternal mortality in Central America. A total of 60% of births in Guatemala are attended by traditional Mayan birth attendants, or comadronas. Their prevalence in these communities makes them a valuable resource to bridge home births with safe prenatal care.
View Article and Find Full Text PDFRadiology
January 2025
Stanford University School of Medicine, Department of Radiation Oncology, Stanford, CA, US.
Background Detection and segmentation of lung tumors on CT scans are critical for monitoring cancer progression, evaluating treatment responses, and planning radiation therapy; however, manual delineation is labor-intensive and subject to physician variability. Purpose To develop and evaluate an ensemble deep learning model for automating identification and segmentation of lung tumors on CT scans. Materials and Methods A retrospective study was conducted between July 2019 and November 2024 using a large dataset of CT simulation scans and clinical lung tumor segmentations from radiotherapy plans.
View Article and Find Full Text PDFJ Physician Assist Educ
January 2025
Juan M. Salgado, MD, Department of Anesthesiology, University of Kansas School of Medicine-Wichita, Wichita, Kansas. He was responsible for concept initiation, presenting the seminar and workshop, data collection and analysis, drafting the manuscript, and approval of the final manuscript.
Introduction: Physician assistants (PAs) should understand the implications and risks involved with airway management. Our study aimed to facilitate PA students' familiarity with airway management with instruction from anesthesiology residents. We assessed the students' knowledge of airway management both before and after a seminar to see if knowledge was retained.
View Article and Find Full Text PDFJ Wound Ostomy Continence Nurs
January 2025
Anna Yoo Chang, DNP, FNP-BC, Family Nurse Practitioner, Mayo Clinic, Jacksonville, Florida.
Purpose: The purpose of this quality improvement project was to determine whether hospital-acquired pressure injuries (HAPIs) could be prevented by implementing an educational tool kit for patient care technicians (PCTs).
Participants And Setting: Data were collected from 24 PCTs and 43 patients in a 26-bed inpatient adult acute care unit at an academic medical center in the mid-Atlantic region of the United States.
Approach: Outcome data were collected over an 8-week period from September to November 2021.
Int J Med Robot
February 2025
Department of Surgery, Division of Transplantation, SUNY Upstate Medical University, Syracuse, New York, USA.
Background: We aimed to investigate the outcome of patients after RDN at different time points.
Methods: We studied the outcomes of 77 living robotic living donor nephrectomies (RDN). Donors were separated into three groups: learning curve period (LCP), stabilisation period (SP), and teaching period (TP).
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