101 research outputs found
on the use of networks in biomedicine
Abstract The concept of "neural network" emerges by electronic models inspired to the neural structure of human brain. Neural networks aim to solve problems currently out of computer's calculation capacity, trying to mimic the role of human brain. Recently, the number of biological based applications using neural networks is growing up. Biological networks represent correlations, extracted from sets of clinical data, diseases, mutations, and patients, and many other types of clinical or biological features. Biological networks are used to model both the state of a range of functionalities in a particular moment, and the space-time distribution of biological and clinical events. The study of biological networks, their analysis and modeling are important tasks in life sciences. Most biological networks are still far from being complete and they are often difficult to interpret due to the complexity of relationships and the peculiarities of the data. Starting from preliminary notions about neural networks, we focus on biological networks and discuss some well-known applications, like protein-protein interaction networks, gene regulatory networks (DNA-protein interaction networks), metabolic networks, signaling networks, neuronal network, phylogenetic trees and special networks. Finally, we consider the use of biological network inside a proposed model to map health related data
Education in Health Informatics: Perspectives from the Italian Society for Biomedical Informatics (SIBIM)
The evolution of socio-technological habits together with the widespread demand of post-acute and chronic treatments outside hospital boundaries drove the increased demand of medical informatics experts to develop tools for and support
healthcare professionals. The recent COVID-19 pandemic further highlighted the need of physicians able to manage diseases virtually and remotely. Moreover, healthcare professionals need to access to innovative techniques and procedures to manage biomedical data, cloud-based communication, and data sharing procedures, often connected to innovative devices to support an effective precision in the health treatments. In this paper we report the experiences of the Italian Biomedical Informatics Society (SIBIM), in the definition and promotion of eHealth educational topics in medical and health professions teaching programs, as well as in bioengineering schools, showing how SIBIM members’ efforts have been applied towards increasing the level of eHealth contents in medical schools
A novel Network Science Algorithm for Improving Triage of Patients
Patient triage plays a crucial role in healthcare, ensuring timely and
appropriate care based on the urgency of patient conditions. Traditional triage
methods heavily rely on human judgment, which can be subjective and prone to
errors. Recently, a growing interest has been in leveraging artificial
intelligence (AI) to develop algorithms for triaging patients. This paper
presents the development of a novel algorithm for triaging patients. It is
based on the analysis of patient data to produce decisions regarding their
prioritization. The algorithm was trained on a comprehensive data set
containing relevant patient information, such as vital signs, symptoms, and
medical history. The algorithm was designed to accurately classify patients
into triage categories through rigorous preprocessing and feature engineering.
Experimental results demonstrate that our algorithm achieved high accuracy and
performance, outperforming traditional triage methods. By incorporating
computer science into the triage process, healthcare professionals can benefit
from improved efficiency, accuracy, and consistency, prioritizing patients
effectively and optimizing resource allocation. Although further research is
needed to address challenges such as biases in training data and model
interpretability, the development of AI-based algorithms for triaging patients
shows great promise in enhancing healthcare delivery and patient outcomes
Leveraging graph neural networks for supporting Automatic Triage of Patients
Patient triage plays a crucial role in emergency departments, ensuring timely
and appropriate care based on correctly evaluating the emergency grade of
patient conditions.
Triage methods are generally performed by human operator based on her own
experience and information that are gathered from the patient management
process.
Thus, it is a process that can generate errors in emergency level
associations. Recently, Traditional triage methods heavily rely on human
decisions, which can be subjective and prone to errors.
Recently, a growing interest has been focused on leveraging artificial
intelligence (AI) to develop algorithms able to maximize information gathering
and minimize errors in patient triage processing.
We define and implement an AI based module to manage patients emergency code
assignments in emergency departments. It uses emergency department historical
data to train the medical decision process. Data containing relevant patient
information, such as vital signs, symptoms, and medical history, are used to
accurately classify patients into triage categories. Experimental results
demonstrate that the proposed algorithm achieved high accuracy outperforming
traditional triage methods. By using the proposed method we claim that
healthcare professionals can predict severity index to guide patient management
processing and resource allocation
Extracting Dense and Connected Subgraphs in Dual Networks by Network Alignment
The use of network based approaches to model and analyse large datasets is
currently a growing research field. For instance in biology and medicine,
networks are used to model interactions among biological molecules as well as
relations among patients. Similarly, data coming from social networks can be
trivially modelled by using graphs. More recently, the use of dual networks
gained the attention of researchers. A dual network model uses a pair of graphs
to model a scenario in which one of the two graphs is usually unweighted (a
network representing physical associations among nodes) while the other one is
edge-weighted (a network representing conceptual associations among nodes). In
this paper we focus on the problem of finding the Densest Connected sub-graph
(DCS) having the largest density in the conceptual network which is also
connected in the physical network. The problem is relevant but also
computationally hard, therefore the need for introducing of novel algorithms
arises. We formalise the problem and then we map DCS into a graph alignment
problem. Then we propose a possible solution. A set of experiments is also
presented to support our approach
vocal signal analysis in patients affected by multiple sclerosis
Abstract Multiple Sclerosis (MS) is one of the most common neurodegenerative disorder that presents specific manifestations among which the impaired speech (known also as dysarthria). The evaluation of the speech plays a crucial role in the diagnosis and follow-up since the identification of anomalous patterns in vocal signal may represent a valid support to physician in diagnosis and monitoring of these neurological diseases. In this contribution, we present a method to perform voice analysis of neurologically impaired patients affected by MS aiming to early detection, differential diagnosis, and monitoring of disease progression. This method integrates two well-known methodologies to support the health structure in MS diagnosis in clinical practice. Acoustic analysis and vowel metric methodologies have been considered to implement this procedure to better define the pathological voices compared to healthy voices. Specifically, the method acquires and analyzes vocal signals performing features extraction and identifying possible important patterns useful to associate impaired speech with this neurological disease. The contribution consists in furnishing to physician a guide method to support MS trend. As result, this method furnishes patterns that could be valid indicators for physician in monitoring of patients affected by MS. Moreover, the procedure is appropriate to be used in early diagnosis that is critical in order to improve the patient's quality of life
Applying Mining Techniques to Analyze Vestibular Data
AbstractThe vestibular apparatus allows to perform audiological and equilibrium human functions and to capture movements with respect to gravity. Damages to the vestibular system causes diseases that can be measured by using Vestibular Evoked Myogenic Potentials (VEMPs) test. The test produces a lot of data that has to be collected and analyzed to allow a disease study and classification. We propose a framework that includes algorithms able to perform pathology distribution and classification. It has been tested on electronic patient records loaded from the University Hospital database. The software allows to manage the structure and framework and a blind application of one of the available classification techniques shows a relation among gender and vestibular apparatus disease
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