Valentina Bordin

Valentina Bordin
Politecnico di Milano | Polimi · Department of Electronics, Information, and Bioengineering

Master of Engineering
Bioengineering PhD Student

About

8
Publications
825
Reads
How we measure 'reads'
A 'read' is counted each time someone views a publication summary (such as the title, abstract, and list of authors), clicks on a figure, or views or downloads the full-text. Learn more
38
Citations
Additional affiliations
November 2020 - present
Politecnico di Milano
Position
  • PhD Student
April 2020 - October 2020
Politecnico di Milano
Position
  • Research Associate
October 2018 - April 2019
University of Oxford
Position
  • Visiting Student
Education
September 2016 - December 2019
Politecnico di Milano
Field of study
  • Bioengineering – Technologies for Electronics
October 2013 - September 2016
Politecnico di Milano
Field of study
  • Bioengineering

Publications

Publications (8)
Article
Full-text available
Quantitative Susceptibility Mapping (QSM) is a recent MRI-technique able to quantify the bulk magnetic susceptibility of myelin, iron, and calcium in the brain. Its variability across different acquisition parameters has prompted the need for standardisation across multiple centres and MRI vendors. However, a high level of agreement between repeate...
Preprint
Full-text available
Alzheimer's Disease (AD) is the world leading cause of dementia, a progressively impairing condition leading to high hospitalization rates and mortality. To optimize the diagnostic process, numerous efforts have been directed towards the development of deep learning approaches (DL) for the automatic AD classification. However, their typical black b...
Conference Paper
Deep Learning approaches are powerful tools in a great variety of classification tasks. However, they are limitedly accepted or trusted in clinical frameworks due to their typical "black box" outline: their architecture is well-known, but processes employed in classification are often inaccessible to humans. With this work, we explored the problem...
Article
Full-text available
Large scale neuroimaging datasets present the possibility of providing normative distributions for a wide variety of neuroimaging markers, which would vastly improve the clinical utility of these measures. However, a major challenge is our current poor ability to integrate measures across different large-scale datasets, due to inconsistencies in im...
Article
Full-text available
White matter hyperintensities (WMHs) on T2-weighted images are radiological signs of cerebral small vessel disease. As their total volume is variably associated with cognition, a new approach that integrates multiple radiological criteria is warranted. Location may matter, as periventricular WMHs have been shown to be associated with cognitive impa...
Article
Full-text available
Background White matter hyperintensities (WMH) on T2‐weighted images are imaging biomarkers of brain small vessel disease. When classified according to location (periventricular/deep), they have shown different associations with cognition. WMH can also appear hypointense on T1‐weighted (T1w) images as a possible sign of irreversible tissue damage....
Preprint
Full-text available
Large scale neuroimaging datasets present the possibility of providing normative distributions for a wide variety of neuroimaging markers, which would vastly improve the clinical utility of these measures. However, a major challenge is our current poor ability to integrate measures across different large-scale datasets, due to inconsistencies in im...
Preprint
Full-text available
White matter hyperintensities (WMHs) on T 2 -weighted images are radiological signs of cerebral small vessel disease. As their total volume is variably associated with cognition, a new approach that integrates multiple radiological criteria is warranted. Location may matter, as periventricular WMHs have been shown to be associated with cognitive im...

Network

Cited By