Multi-Omics Fusion with Soft Labeling for Enhanced Prediction of Distant Metastasis in Nasopharyngeal Carcinoma Patients after Radiotherapy
Journal:
arXiv
Published Date:
Feb 12, 2025
Abstract
Omics fusion has emerged as a crucial preprocessing approach in the field of
medical image processing, providing significant assistance to several studies.
One of the challenges encountered in the integration of omics data is the
presence of unpredictability arising from disparities in data sources and
medical imaging equipment. In order to overcome this challenge and facilitate
the integration of their joint application to specific medical objectives, this
study aims to develop a fusion methodology that mitigates the disparities
inherent in omics data. The utilization of the multi-kernel late-fusion method
has gained significant popularity as an effective strategy for addressing this
particular challenge. An efficient representation of the data may be achieved
by utilizing a suitable single-kernel function to map the inherent features and
afterward merging them in a space with a high number of dimensions. This
approach effectively addresses the differences noted before. The inflexibility
of label fitting poses a constraint on the use of multi-kernel late-fusion
methods in complex nasopharyngeal carcinoma (NPC) datasets, hence affecting the
efficacy of general classifiers in dealing with high-dimensional
characteristics. This innovative methodology aims to increase the disparity
between the two cohorts, hence providing a more flexible structure for the
allocation of labels. The examination of the NPC-ContraParotid dataset
demonstrates the model's robustness and efficacy, indicating its potential as a
valuable tool for predicting distant metastases in patients with nasopharyngeal
carcinoma (NPC).