Survival Prediction Landscape: An In-Depth Systematic Literature Review on Activities, Methods, Tools, Diseases, and Databases

Author:

Abbasi Ahtisham Fazeel,Asim Muhammad Nabeel,Ahmed Sheraz,Vollmer Sebastian,Dengel Andreas

Abstract

ABSTRACTSurvival prediction integrates patient-specific molecular information and clinical signatures to forecast the anticipated time of an event, such as recurrence, death, or disease progression. Survival prediction proves valuable in guiding treatment decisions, optimizing resource allocation, and interventions of precision medicine. The wide range of diseases, the existence of various variants within the same disease, and the reliance on available data necessitate disease-specific computational survival predictors. The widespread adoption of artificial intelligence (AI) methods in crafting survival predictors has undoubtedly revolutionized this field. However, the ever-increasing demand for more sophisticated and effective prediction models necessitates the continued creation of innovative advancements. To catalyze these advancements, the need of the hour is to bring existing survival predictors knowledge and insights into a centralized platform. The paper in hand thoroughly examines 22 existing review studies and provides a concise overview of their scope and limitations. Focusing on a comprehensive set of 74 most recent survival predictors across 44 diverse diseases, it delves into insights of diverse types of methods that are used in the development of disease-specific predictors. This exhaustive analysis encompasses the utilized data modalities along with a detailed analysis of subsets of clinical features, feature engineering methods, and the specific statistical, machine or deep learning approaches that have been employed. It also provides insights about survival prediction data sources, open-source predictors, and survival prediction frameworks.

Publisher

Cold Spring Harbor Laboratory

Reference161 articles.

1. How many rare diseases are there?;Nat. reviews drug discovery,2020

2. Disease control priorities: improving health and reducing poverty;The Lancet,2018

3. World Health Organization. The top 10 causes of death. https://www.who.int/news-room/fact-sheets/detail/the-top-10-causes-of-death (2020). Accessed: January 4, 2024.

4. Does one size fit all? patents, the right to health and access to medicines;Neth. Int. Law Rev,2015

5. Combinatorial drug therapy for cancer in the post-genomic era

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