Affiliation:
1. School of Computer and Information Engineering, Henan University, Kaifeng, Henan, China
2. College of Computer
Science and Technology, Henan Polytechnic University, Jiaozuo, Henan, China
Abstract
Background::
Cancer has emerged as the "leading killer" of human health. Survival prediction
is a crucial branch of cancer prognosis. It aims to estimate patients' survival risk based on
their disease conditions. Accurate and efficient survival prediction is vital in cancer patients' treatment
and clinical management, preventing unnecessary suffering and conserving precious medical
resources. Deep learning has been extensively applied in cancer diagnosis, prognosis, and treatment
management. The decreasing cost of next-generation sequencing, continuous development of related
databases, and in-depth research on multimodal deep learning have provided opportunities for establishing
more functionally rich and accurate survival prediction models.
Objective::
The current area of cancer survival prediction still lacks a review of multimodal deep
learning methods.
Methods::
We conducted a statistical analysis of the relevant research on multimodal deep learning
for cancer survival prediction. We first filtered keywords from 6 known relevant papers. Then, we
searched PubMed and Google Scholar for relevant publications from 2018 to 2022 using "Multimodal",
"Deep Learning" and "Cancer Survival Prediction" as keywords. Then, we further searched
the related publications through the backward and forward citation search. Subsequently, we conducted
a detailed analysis and review of these studies based on their datasets and methods.
Results::
We present a comprehensive systematic review of the multimodal deep learning research
on cancer survival prediction from 2018 to 2022.
Conclusion::
Multimodal deep learning has demonstrated powerful data aggregation capabilities and
excellent performance in improving cancer survival prediction greatly. It has made a significant positive
impact on facilitating the advancement of automated cancer diagnosis and precision oncology.
Publisher
Bentham Science Publishers Ltd.