PhD projects and EU funds

PON Projects
Below you can find information on the projects financed in the context of the allocation of the budget of the PON "Research and Innovation" 2014-2020
Molecular Medicine
PhD student : Greta Gallo
Supervisor: Marco E. Bianchi
Abstract
We design antisense oligonucleotides (LNA-ASOs) that inhibit SARS-CoV-2 replication: by analysing in-vivo probing data we select regions with a high degree of conservation among SARS-CoV-2 variants, SARS-CoV, and MERS-CoV. We found genomic regions displaying high sequence conservation and low propension to form secondary structures. We will perform assays in vitro and cells, and later in a HyACE2 mouse model.
Objectives
Our aim is to find LNA-ASOs that inhibit replication of all SARS-CoV-2, to design a proper delivery system and to study their therapeutic effect in a SARS-CoV-2 sensitive mouse model.
Results achieved
We found 4 LNA-ASOs able to reduce by more than 90% SARS-CoV-2 genomic presence in a HuH-7.5 cell line for SARS-CoV-2 B.1, B.1.617.2, BA.1 e BA.2.
PhD student: Carolina Bezzi
Supervisor: Maria Picchio
Abstract
To apply and validate the role of advanced image analysis (radiomics, AI algorithms), especially in the field of Positron Emission Tomography (PET), in different oncological settings and key clinical purposes (staging, treatment planning, tumor segmentation, etc.). For each investigation, scans are processed, and relevant imaging patterns are identified and analyzed through statistical analysis and AI, using clinical gold standards as ground truth. Models’ predictions are then compared with accuracy rates of experts’ qualitative examinations and/or biopsy specimens.
Objectives
To gain improvements and valuable insights on the role of advanced image analysis in the oncological field, and to develop innovative diagnostic/prognostic imaging approaches to support clinical decision-making.
Results achieved
Advanced image analysis is proving its role in supporting the diagnosis/prognosis in pancreatic neuroendocrine tumors, gynaecological tumors, and prostate cancer, providing additional, still unexploited information.
PhD student: Sofia Sisti
Supervisor: Nicola Clementi
Abstract
In the last few years, the COVID-19 pandemic heavily impacted the social behavior and economic aspects of our society. The rapid diffusion of different SARS-CoV-2 variants of interest (VOI) was associated with the transmission through direct contact (droplets, aerosol, and person-to-person transmission) but also with indirect contact. Therefore, this project will investigate the possible mechanisms leading to indirect transmission of SARS-CoV-2 through different fomites.
Objectives
The main goals are to investigate the persistence of SARS-CoV-2 VOI on environmental surfaces and to study the inhibitory activity of sterilization approaches against SARS-CoV-2 variants.
Results achieved
Until now, we validated an in vitro model useful to mimic the in vivo SARS-CoV-2 variants infections and we obtained preliminary results of the persistence of VOI on different surfaces.
PhD Student: Damiano Mistri
Supervisor: Rocca Maria Assunta
Abstract:
Multiple sclerosis (MS) is a chronic, inflammatory, demyelinating and neurodegenerative disease of the central nervous system. Pediatric-onset MS (POMS) occurs in an estimated 3-10% of MS patients. Cognitive decline affects 30-50% of POMS patients, impacting memory, attention, and processing speed. MRI is crucial for diagnosis and monitoring disease progression and the application of advanced MRI techniques is contributing to identify the substrates associated with cognitive dysfunction in POMS.
Objectives
The project aims to understand the neural substrates of cognitive dysfunction in POMS using advanced MRI techniques and machine learning. Additionally, the research aims to develop a new tool for assessing cognitive processing speed.
Results achieved
Using a machine learning approach, three cognitive phenotypes were identified in POMS, each associated with a distinct pattern of structural and functional MRI abnormalities.
Philosophy
PhD student: Alessandro Anzà
Supervisor: Francesca De Vecchi
Abstract
At the heart of my research is the relationship between present and future generations, which is particularly relevant in the context of climate change and the crisis of democratic representation. I want to introduce a phenomenological perspective to the current debates, that analyses the transgenerational constitution of our natural, social, and historical world in which we share. It assesses how and if age as well as generational belonging play a role in shaping personal identity and the nature of the social groups in which we live.
Objectives
The aim is to identify the main characteristics and general dynamics of a specific group of people that I call “future-maker generations” (FMG) who can jointly cope with the challenges of the contemporary world, overcoming generational boundaries and other conflicting patterns of social injustice and discriminations.
Results achieved
The phenomenological perspective (Husserl, Schütz, Arendt) allows social ontology (Searle, Gilbert) to be enriched with a gaze into the transgenerational social world of individual person and of plural subjects.
PhD student: Luca Ausili
Supervisor: Carlo Martini
Abstract
This research project’s aim is to study the causes of the current spread of scientific disinformation within the
infosphere, with a particular focus on the disinformation relative to climate change. Through the
understanding of the dynamics related to this phenomenon, and their description, the attempt will be to offer
useful recommendations to contrast the negative effects of scientific disinformation and depict the status of
the relation between science and society.
Objectives
- Define which possible changes of the current communication between science and society could be
implemented to prevent the spread of scientific disinformation.
- Define the socio-epistemic reasons that motivate people’s acceptance of openly anti-scientific
contents.
Achieved results
- Analysis of people’s ability to evaluate the scientific reliability of the information found online.
- Definition of a theory that categorizes scientific disinformation as a socio-epistemic phenomenon.
PhD student: Gemmani Gianluca
Supervisor: Francesco Valagussa
Abstract
The project aims to examine the concepts of production and storytelling through the study of landscape as a theoretical object. This means considering landscape as a 'symbolic form,' as an instrument capable of expressing the tendencies and worldview of an entire age. If it is to be understood as the boundary in which the categories of nature and culture act reciprocally, the living space between the two, then landscape becomes the reflexive device through which it is possible, from a social aesthetics perspective, to highlight the practices through which we shape, signify and build the environment that surrounds.
Objectives
To show, through the study of landscape as a reflexive device, how the aesthetic and social dimensions are inseparable and mutually dependent, and how the production and storytelling of our surroundings are linked.
Achieved results
Through seminars, conferences and publications, arguments have been made emphasizing two key points. First: it is always necessary to distinguish landscape and environment in order to protect both. Second: landscape is the clash site of opposing epistemic models.
PhD student: Maurizio Mascitti
Supervisor: Bianca Cepollaro
Abstract
My research project investigates the phenomenon of fake news concerning climate change by adopting the prospective of cognitive pragmatics. The whole project can be divided in two sections. In the first one I summarise current positions within the epistemological debate over fake news; then, I put forth a new general theory of fake news as news that violate specific norms of journalism. In the second section, instead, this new theory is readily used in order to develop a case study of disinformation about the topic of climate change.
Objectives
- The development of a new theory of fake news that set them apart from ‘ordinary’ disinformation
- The development of a case study on fake news around climate change
Results achieved
- The development of the theory of fake news as the byproduct of a violation of specific norms of journalism
PhD student: Alessandro Volpi
Supervisor: Roberta Sala
Abstract
The project addresses the relationship between the concept and practices associated with political sovereignty, on the one hand, and the global challenge of anthropogenic climate change, on the other hand. A political theory perspective is adopted, supported by a critical analysis of the current situation and a genealogical investigation on the concept of sovereignty and the public-private distinction, as well as enriched by political ecology and political economy perspectives.
Objectives
The project aims to propose a political ecology and social justice-based critique of the current conformations of political sovereignty and globalization regime, and to consequently develop alternative theoretical and policy proposals.
Results achieved
The research work has been concerned so far with identifying method and literature appropriate for the project, with partial results being in process of publication in international journals.
Cognitive Neuroscience
PhD Student: Yasmin Harrington
Supervisor: Sara Poletti
Abstract
Postpartum depression (PPD) is a disorder that results in physical, emotional, and behavioral changes after giving birth. It is the most common maternal complication of pregnancy, yet its biological underpinnings remain largely unknown. Past research has suggested PPD may arise in part due to immunological alterations and brain changes; however, results are mixed and inconclusive, and therefore, more studies are needed.
Objectives
We aim to identify differences in grey and white matter structure, functional connectivity, and neuroimmune patterns associated with PPD in the context of the COVID-19 pandemic.
Results achieved
We have recruited 150 women for prospective analyses and have identified structural grey and white matter variances related to history of PPD in preliminary retrospective analyses.
PhD student: Mariagrazia Palladini
Supervisor: Prof. Francesco Benedetti
Abstract
COVID-19 survivors struggling with organic and psychopathological complications referred to as “Post-Acute Covid Syndrome” (PACS), posing an outstanding challenge to the health care system. Immune-mediated pathway and brain-enhanced susceptibility to systemic inflammation gained attention as leading mechanism behind neuropsychiatric outcomes. However, the open issue persists about the exact linkage between inflammatory-induced CNS alterations and post-COVID condition phenotypes.
Objectives
The current project primary aimed at integrating multimodal imaging measures, along with peripheral inflammatory biomarkers in a clustering-based machine learning procedure to identify long-term clinically meaningful sub-populations of COVID-19 survivors.
Results achieved
Structural and functional preprocessing of COVID-19 survivors’ neuroimaging data. Exploratory analysis on association between CNS alterations and post-COVID-19 neuropsychiatric symptoms.