Towards an effective and explainable AI: studies in the biomedical domain
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Bruno, Pierangela
Greco, Gianluigi
Calimeri, Francesco
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UNIVERSITÀ DELLA CALABRIA
Dipartimento di Matematica e Informatica
Dottorato di Ricerca in Matematica e Informatica
XXXIII CICLO; Providing accurate diagnoses of diseases and maximizing the effectiveness of treatments
requires, in general, complex analyses of many clinical, omics, and imaging
data. Making a fruitful use of such data is not straightforward, as they need to be
properly handled and processed in order to successfully perform medical diagnosis.
This is why Artificial Intelligence (AI) is largely employed in the field. Indeed, in
recent years, Machine Learning (ML), and in particular Deep Learning (DL), techniques
emerged as powerful tools to perform specific disease detection and classification,
thus providing significant support to clinical decisions. They gained a special
attention in the scientific community, especially thanks to their ability in analyzing
huge amounts of data, recognizing patterns, and discovering non-trivial functional
relationships between input and output. However, such approaches suffer, in general,
from the lack of proper means for interpreting the choices made by the learned
models, especially in the case of DL ones.
This work is based on both a theoretical and methodological study of AI techniques
suitable for the biomedical domain; furthermore, we put a specific focus on
the practical impact on the application and adaptation of such techniques to relevant
domain.
In this work, ML and DL approaches have been studied and proper methods
have been developed to support (i) medical imaging diagnostic and computer-assisted
surgery via detection, segmentation and classification of vessels and surgical tools
in intra-operative images and videos (e.g., cine-angiography), and (ii) data-driven
disease classification and prognosis prediction, through a combination of data reduction,
data visualization and classification of high-dimensional clinical and omics
data, to detect hidden structural properties useful to investigate the progression of
the disease. In particular, we focus on defining a novel approach for automated
assessment of pathological conditions, identifying latent relationships in different
domains and supporting healthcare providers in finding the most appropriate preventive
interventions and therapeutic strategies. Furthermore, we propose a study
about the analysis of the internal processes performed by the artificial networks during
classification tasks, with the aim to provide a AI-based model explainability.
This manuscript is presented in four parts, each focusing on a special aspect of
DL techniques and offering different examples of their application in the biomedical domain.
In the first part we introduce clinical and omics data along with the popular
processing methods to improve the analyses; we also provide an overview of the
main DL techniques and approaches aimed at performing disease prediction and
prevention and at identifying bio-markers via biomedical data and images.
In the second part we describe how we applied DL techniques to perform the
segmentation of vessels in the ilio-femoral images. Furthermore, we propose a combination
of multi-instance segmentation network and optical flow to solve the multiinstance
segmentation and detection tasks in endoscopic images.
In the third part a combination of data reduction and data visualization techniques
is proposed for the reduction of clinical and omics data and their visualization
into images, with the aim of performing DL-based classification. Furthermore,
we present a ML-based approach to develop a risk model for class prediction from
high-dimensional gene expression data, for the purpose of identifying a subset of
genes that may influence the survival rate of specific patients.
Eventually, in the fourth part we provide a study on the behaviour of AI-based
systems during classification tasks, such as image-based disease classification, which
is a widely studied topic in the recent years; more in detail, we show how DL-based
systems can be studied with the aim of identifying the most relevant elements involved
in the training processes and validating the network’s decisions, and possibly
the clinical treatment and recommendation.Soggetto
Artificial Intelligence; Neural networks; Deep Learning; Biomedical data and imaging; Explainability
Relazione
INF/01;