Network-based methods for outcome prediction in the "sample space"

02/04/2017
by   Jessica Gliozzo, et al.
0

In this thesis we present the novel semi-supervised network-based algorithm P-Net, which is able to rank and classify patients with respect to a specific phenotype or clinical outcome under study. The peculiar and innovative characteristic of this method is that it builds a network of samples/patients, where the nodes represent the samples and the edges are functional or genetic relationships between individuals (e.g. similarity of expression profiles), to predict the phenotype under study. In other words, it constructs the network in the "sample space" and not in the "biomarker space" (where nodes represent biomolecules (e.g. genes, proteins) and edges represent functional or genetic relationships between nodes), as usual in state-of-the-art methods. To assess the performances of P-Net, we apply it on three different publicly available datasets from patients afflicted with a specific type of tumor: pancreatic cancer, melanoma and ovarian cancer dataset, by using the data and following the experimental set-up proposed in two recently published papers [Barter et al., 2014, Winter et al., 2012]. We show that network-based methods in the "sample space" can achieve results competitive with classical supervised inductive systems. Moreover, the graph representation of the samples can be easily visualized through networks and can be used to gain visual clues about the relationships between samples, taking into account the phenotype associated or predicted for each sample. To our knowledge this is one of the first works that proposes graph-based algorithms working in the "sample space" of the biomolecular profiles of the patients to predict their phenotype or outcome, thus contributing to a novel research line in the framework of the Network Medicine.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/17/2016

A Multi-Modal Graph-Based Semi-Supervised Pipeline for Predicting Cancer Survival

Cancer survival prediction is an active area of research that can help p...
research
12/16/2021

A molecular generative model with genetic algorithm and tree search for cancer samples

Personalized medicine is expected to maximize the intended drug effects ...
research
04/26/2017

Network-based coverage of mutational profiles reveals cancer genes

A central goal in cancer genomics is to identify the somatic alterations...
research
08/07/2018

Inferring Molecular Pathology and micro-RNA Transcriptome from mRNA Profiles of Cancer Biopsies through Deep Multi-Task Learning

Despite great advances, molecular cancer pathology is often limited to u...
research
10/12/2020

PhD dissertation to infer multiple networks from microbial data

The interactions among the constituent members of a microbial community ...
research
11/28/2019

Effective Sub-clonal Cancer Representation to Predict Tumor Evolution

The majority of cancer treatments end in failure due to Intra-Tumor Hete...
research
06/22/2020

Graph Learning for Inverse Landscape Genetics

The problem of inferring unknown graph edges from numerical data at a gr...

Please sign up or login with your details

Forgot password? Click here to reset