A Deep Active Survival Analysis Approach for Precision Treatment Recommendations: Application of Prostate Cancer

04/10/2018
by   Milad Zafar Nezhad, et al.
0

Survival analysis has been developed and applied in the number of areas including manufacturing, finance, economics and healthcare. In healthcare domain, usually clinical data are high-dimensional, sparse and complex and sometimes there exists few amount of time-to-event (labeled) instances. Therefore building an accurate survival model from electronic health records is challenging. With this motivation, we address this issue and provide a new survival analysis framework using deep learning and active learning with a novel sampling strategy. First, our approach provides better representation with lower dimensions from clinical features using labeled (time-to-event) and unlabeled (censored) instances and then actively trains the survival model by labeling the censored data using an oracle. As a clinical assistive tool, we introduce a simple effective treatment recommendation approach based on our survival model. In the experimental study, we apply our approach on SEER-Medicare data related to prostate cancer among African-Americans and white patients. The results indicate that our approach outperforms significantly than baseline models.

READ FULL TEXT
research
12/16/2019

Deep learning-based survival prediction for multiple cancer types using histopathology images

Prognostic information at diagnosis has important implications for cance...
research
04/16/2023

Using Geographic Location-based Public Health Features in Survival Analysis

Time elapsed till an event of interest is often modeled using the surviv...
research
10/25/2022

Predicting Survival Outcomes in the Presence of Unlabeled Data

Many clinical studies require the follow-up of patients over time. This ...
research
09/07/2023

CenTime: Event-Conditional Modelling of Censoring in Survival Analysis

Survival analysis is a valuable tool for estimating the time until speci...
research
09/30/2022

Explainable Censored Learning: Finding Critical Features with Long Term Prognostic Values for Survival Prediction

Interpreting critical variables involved in complex biological processes...
research
08/22/2021

Deep survival analysis with longitudinal X-rays for COVID-19

Time-to-event analysis is an important statistical tool for allocating c...
research
10/21/2021

Survival-oriented embeddings for improving accessibility to complex data structures

Deep learning excels in the analysis of unstructured data and recent adv...

Please sign up or login with your details

Forgot password? Click here to reset