In this thesis, we used support vector machines (SVMs) to build a tissue-of-origin classifier of 17 cancer types. Our classifier, which uses RNA expression data from over 20000 genes, works with high accuracy on primary (97.6%), metastasis (91.9%) and cell-line samples (71.1%). With the goal of enabling cheaper diagnostics for the clinics, we performed feature selection through recursive feature elimination (RFE) and identified a gene signature of just 120 genes that maintains almost all of the predictive power. We explored how our model could achieve such great accuracy and found that it recognises characteristics from healthy tissues rather than cancer. In order to help disseminate our results among clinicians and basic researchers, we re...
To improve cancer diagnosis and drug development, the classification of tumor types based on genomic...
Abstract Background The high growth of Next Generation Sequencing data currently demands new knowled...
Cancer is a group of diseases characterized by the uncontrolled growth and spread of abnormal cells....
Cancer has become one of the major factors responsible for global deaths, due to late diagnoses and ...
Data-driven model with predictive ability are important to be used in medical and healthcare. Howeve...
Metastatic cancers account for up to 90% of cancer-related deaths. The clear differentiation of meta...
Personalized medicine approaches for cancer therapy seek to determine optimal therapies for cancer p...
Copyright © 2015 Yukun Chen et al. This is an open access article distributed under the Creative Com...
DNA microarray technology allows detection of the expression levels of thousands of genes at a time,...
Background Establishing the cancer type and site of origin is important in determining the most app...
Abstract: Problem statement: The objective of this study is, to find the smallest set of genes that ...
Cancer has been described as a diverse illness with several distinct subtypes that may occur simulta...
The highest number of cancer-associated deaths are attributable to metastasis. These include rare ca...
Cancer classification is a topic of major interest in medicine since it allows accurate and efficien...
Machine learning approaches are powerful techniques commonly employed for developing cancer predicti...
To improve cancer diagnosis and drug development, the classification of tumor types based on genomic...
Abstract Background The high growth of Next Generation Sequencing data currently demands new knowled...
Cancer is a group of diseases characterized by the uncontrolled growth and spread of abnormal cells....
Cancer has become one of the major factors responsible for global deaths, due to late diagnoses and ...
Data-driven model with predictive ability are important to be used in medical and healthcare. Howeve...
Metastatic cancers account for up to 90% of cancer-related deaths. The clear differentiation of meta...
Personalized medicine approaches for cancer therapy seek to determine optimal therapies for cancer p...
Copyright © 2015 Yukun Chen et al. This is an open access article distributed under the Creative Com...
DNA microarray technology allows detection of the expression levels of thousands of genes at a time,...
Background Establishing the cancer type and site of origin is important in determining the most app...
Abstract: Problem statement: The objective of this study is, to find the smallest set of genes that ...
Cancer has been described as a diverse illness with several distinct subtypes that may occur simulta...
The highest number of cancer-associated deaths are attributable to metastasis. These include rare ca...
Cancer classification is a topic of major interest in medicine since it allows accurate and efficien...
Machine learning approaches are powerful techniques commonly employed for developing cancer predicti...
To improve cancer diagnosis and drug development, the classification of tumor types based on genomic...
Abstract Background The high growth of Next Generation Sequencing data currently demands new knowled...
Cancer is a group of diseases characterized by the uncontrolled growth and spread of abnormal cells....