International Conference on Survival Analysis and Time-to-Event Modeling - (ICSATEM-26)
9th - 10th May, 2026 | Bangkok, Thailand
9th April, 2026
19th April, 2026
24th April, 2026
9th - 10th May, 2026
This conference contributes to global sustainability by aligning its research discussions and academic sessions with key United Nations Sustainable Development Goals. It fosters knowledge exchange, innovation, and collaborative engagement.
SDG 3 — Good Health and Well-being
SDG 4 — Quality Education
SDG 9 — Industry, Innovation and Infrastructure
This track focuses on the latest methodologies and innovations in survival analysis, emphasizing new statistical techniques and their applications. Researchers are encouraged to present novel approaches that enhance the understanding of time-to-event data.
This session will explore various hazard models used in survival analysis, including proportional hazards and accelerated failure time models. Participants will discuss practical applications in fields such as biostatistics and epidemiology.
This track addresses the intersection of reliability theory and survival analysis, focusing on the modeling of failure times and reliability functions. Contributions should highlight theoretical advancements and real-world applications.
This session invites discussions on statistical methodologies specifically tailored for analyzing clinical trial data. Emphasis will be placed on time-to-event outcomes and the implications for patient care.
This track will delve into the use of predictive analytics in survival analysis, showcasing techniques that enhance forecasting and decision-making. Researchers are encouraged to present case studies demonstrating the impact of predictive models.
This session focuses on the integration of machine learning techniques with traditional survival analysis methods. Participants will explore how these approaches can improve model accuracy and interpretability.
This track highlights the application of quantitative methods in epidemiological studies, particularly in analyzing time-to-event data. Contributions should focus on innovative statistical techniques that address public health challenges.
This session will cover the role of simulation in the development and validation of survival analysis models. Researchers are invited to share insights on simulation methodologies and their practical applications.
This track will explore risk analysis frameworks within the context of time-to-event data, focusing on identifying and managing risks in various domains. Contributions should highlight both theoretical and applied perspectives.
This session will examine the role of data science in advancing survival analysis methodologies, including data mining and big data techniques. Participants are encouraged to present interdisciplinary approaches that leverage data science tools.
This track will explore the application of artificial intelligence in biostatistics, particularly in modeling and analyzing survival data. Researchers are invited to discuss the potential of AI to transform traditional statistical practices.