In biomedical research, applied machine learning and bioinformatics are the essential disciplines heavily involved in translating data-driven findings into medical practice. This task is especially accomplished by developing computational tools and algorithms assisting in detection and clarification of underlying causes of the diseases. The continuous advancements in high-throughput technologies coupled with the recently promoted data sharing policies have contributed to presence of a massive wealth of data with remarkable potential to improve human health care. In concordance with this massive boost in data production, innovative data analysis tools and methods are required to meet the growing demand. The data analyzed by bioinformaticians...
Cancer is a complex molecular process due to abnormal changes in the genome, such as mutation and co...
Machine learning algorithms are becoming the most effective methods for knowledge discovery from hig...
Advances in high-throughput genomic and proteomic technology have led to a growing interest in cance...
Biomarkers are of great importance in many fields, such as cancer research, toxicology, diagnosis an...
In recent years, biological research revolves around huge amounts of data which are extrapolated due...
Machine learning approaches are powerful techniques commonly employed for developing cancer predicti...
Identifying biomarkers that can be used to classify certain disease stages or predict when a disease...
In recent years, the healthcare industry has made great advancements with the inclusion of poly-omic...
Cancer is a leading cause of death worldwide, claiming millions of lives each year. Cancer biology i...
Precision medicine is being developed as a preventative, diagnostic and treatment tool to combat com...
Most human common diseases are complex traits that are controlled by genetic variants in multiple ge...
With more and more biological information generated, the most pressing task of bioinformatics has be...
In this thesis, we present three projects on prognosis biomarker detection, machine learning bias co...
© 2020 Richard LupatRapid advancement in genomic technologies has driven down the cost of sequencing...
Recent advances in high-throughput genomic technologies and high-performance computing have propelle...
Cancer is a complex molecular process due to abnormal changes in the genome, such as mutation and co...
Machine learning algorithms are becoming the most effective methods for knowledge discovery from hig...
Advances in high-throughput genomic and proteomic technology have led to a growing interest in cance...
Biomarkers are of great importance in many fields, such as cancer research, toxicology, diagnosis an...
In recent years, biological research revolves around huge amounts of data which are extrapolated due...
Machine learning approaches are powerful techniques commonly employed for developing cancer predicti...
Identifying biomarkers that can be used to classify certain disease stages or predict when a disease...
In recent years, the healthcare industry has made great advancements with the inclusion of poly-omic...
Cancer is a leading cause of death worldwide, claiming millions of lives each year. Cancer biology i...
Precision medicine is being developed as a preventative, diagnostic and treatment tool to combat com...
Most human common diseases are complex traits that are controlled by genetic variants in multiple ge...
With more and more biological information generated, the most pressing task of bioinformatics has be...
In this thesis, we present three projects on prognosis biomarker detection, machine learning bias co...
© 2020 Richard LupatRapid advancement in genomic technologies has driven down the cost of sequencing...
Recent advances in high-throughput genomic technologies and high-performance computing have propelle...
Cancer is a complex molecular process due to abnormal changes in the genome, such as mutation and co...
Machine learning algorithms are becoming the most effective methods for knowledge discovery from hig...
Advances in high-throughput genomic and proteomic technology have led to a growing interest in cance...