• IMA sites
  • IMAJ services
  • IMA journals
  • Follow us
  • Alternate Text Alternate Text
עמוד בית
Sat, 21.03.26

Search results


March 2026
Alon Lalezari MD, Antoni Skripai MD MBA, Karam Wattad MD, Nechama Sharon MD

Background: Adolescent suicide attempts have well-established risk factors. The increased number of cases at Laniado Hospital's pediatric department over the past decade prompted our evaluation of the relative importance of these factors.

Objectives: To characterize adolescents presenting after suicide attempts and to use these features to develop a neural network for early identification of at-risk youth.

Methods: We conducted a retrospective study of suicide attempts among adolescents (11–18 years) admitted to Laniado Hospital's pediatric department (2015–2021). The study included 82 patients with a matched control group (n=82). We analyzed epidemiological, medical, and psychosocial characteristics, identifying statistically significant factors associated with suicide attempts. We then built a predictive model using neural networks.

Results: Significant risk factors for suicide attempts included living outside original home (odds ratio [OR] 6.71, P = 0.0002), female gender (OR 12.67, P = 0.0502), unmarried parents (OR=98.51, P < 0.0001), advanced age (95% confidence interval [95%CI] 0.477–1.583, P = 0.0001), higher hemoglobin (95%CI 0.689–1.81, P = 6.30 × 10-6), higher mean corpuscular volume (MCV) (95%CI 3.61–8.07, P = 0.014), and prior psychiatric diagnosis (OR 71.82, P < 0.0001). Non-Ashkenazi background was more common but not significant (P = 0.074). Our neural network model achieved 99.85% predictive accuracy.

Conclusions: Psychiatric history, unmarried parents, female gender, and living outside the home were the strongest risk factors for adolescent suicide attempts. We observed higher hemoglobin levels and MCV among affected individuals. Our neural network showed high accuracy (99.85%) in distinguishing between adolescents with suicide attempts from matched controls.

February 2024
Orly Gal-Or MD, Alon Tiosano MD, Inbar Perchik BSc, Yogev Giladi MD, Irit Bahar MD

Artificial intelligence in ophthalmology is used for automatic diagnosis, data analysis, and predicting responses to possible treatments. The potential challenges in the application and assimilation of artificial intelligence include technical challenges of the algorithms, the ability to explain the algorithm, and the ability to diagnose and manage the medical course of patients. Despite these challenges, artificial intelligence is expected to revolutionize the way ophthalmology will be practiced. In this review, we compiled recent reports on the use and application of deep learning in various fields of ophthalmology, potential challenges in clinical deployment, and future directions.

Legal Disclaimer: The information contained in this website is provided for informational purposes only, and should not be construed as legal or medical advice on any matter.
The IMA is not responsible for and expressly disclaims liability for damages of any kind arising from the use of or reliance on information contained within the site.
© All rights to information on this site are reserved and are the property of the Israeli Medical Association. Privacy policy

2 Twin Towers, 35 Jabotinsky, POB 4292, Ramat Gan 5251108 Israel