One of the goals of precision medicine is to classify patients into subgroups that differ in their susceptibility and response to a disease, thereby enabling tailored treatments for each subgroup. Therefore, there is a great need to identify distinctive clusters of patients from patient data. There are three key challenges to three key challenges of patient stratification: 1) the unknown number of clusters, 2) the need for assessing cluster validity, and 3) the clinical interpretability. We developed MapperPlus, a novel unsupervised clustering pipeline, that directly addresses these challenges. It extends the topological Mapper technique and blends it with two random-walk algorithms to automatically detect disjoint subgroups in patient data...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
Parkinson’s disease (PD) is a chronic disease. No treatment stops its progression, and it presents s...
Precision medicine is a promising field that proposes, in contrast to a one-size-fits-all approach, ...
One of the goals of precision medicine is to classify patients into subgroups that differ in their s...
International audienceBackgroundThis paper exploits recent developments in topological data analysis...
Treball fi de màster de: Master in Computational Biomedical EngineeringTutor: Karim LekadirMedical c...
Abstract Context Identifying clusters (i.e., subgroups) of patients from the analysis of medico-admi...
Disease subtyping, which helps to develop personalized treatments, remains a challenge in data analy...
Disease understanding is key in designing effective treatments and diagnostic tools. A key aspect of...
International audienceContext Identifying clusters (i.e., subgroups) of patients from the analysis o...
In this paper we use clustering methods to profile a data base of breast cancer patients, as a basis...
Data mining refers to the process of retrieving knowledge by discovering novel and relative patterns...
There is a growing need for unbiased clustering algorithms, ideally automated to analyze complex dat...
MOTIVATION: It has been proposed that clustering clinical markers, such as blood test results, can b...
It has been proposed that clustering clinical markers, such as blood test results, can be used to st...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
Parkinson’s disease (PD) is a chronic disease. No treatment stops its progression, and it presents s...
Precision medicine is a promising field that proposes, in contrast to a one-size-fits-all approach, ...
One of the goals of precision medicine is to classify patients into subgroups that differ in their s...
International audienceBackgroundThis paper exploits recent developments in topological data analysis...
Treball fi de màster de: Master in Computational Biomedical EngineeringTutor: Karim LekadirMedical c...
Abstract Context Identifying clusters (i.e., subgroups) of patients from the analysis of medico-admi...
Disease subtyping, which helps to develop personalized treatments, remains a challenge in data analy...
Disease understanding is key in designing effective treatments and diagnostic tools. A key aspect of...
International audienceContext Identifying clusters (i.e., subgroups) of patients from the analysis o...
In this paper we use clustering methods to profile a data base of breast cancer patients, as a basis...
Data mining refers to the process of retrieving knowledge by discovering novel and relative patterns...
There is a growing need for unbiased clustering algorithms, ideally automated to analyze complex dat...
MOTIVATION: It has been proposed that clustering clinical markers, such as blood test results, can b...
It has been proposed that clustering clinical markers, such as blood test results, can be used to st...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
Parkinson’s disease (PD) is a chronic disease. No treatment stops its progression, and it presents s...
Precision medicine is a promising field that proposes, in contrast to a one-size-fits-all approach, ...