260 research outputs found

    Improving bioavailability of insoluble payloads through PLGA nanotechnology

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    Bioactive molecules are a cluster of natural or synthetic compounds, which modu- late actions in the body promoting good health. Furthermore, they have been ap- plied in the prevention of cancer, heart disease, and other diseases for their antiox- idant, anti-inflammatory, anti-microbial, anti-cancer properties. Among them, many are hydrophobic or poorly soluble nutrients, such as phenolic compounds, ca- rotenoids, essential oils, essential fatty acids, insoluble peptides, and vitamins. Their low water solubility is the limiting factor for their use in both nutraceutical and pharmacological industries. In fact, drugs with poor water solubility show a slower absorption rate, which can lead to inadequate bioavailability making the drug ineffective. Furthermore, hydrophobic molecules can also be used as bio- probe for imaging purpose. Narrow bandwidth emissions and large Stokes shifts make lanthanide complexes interesting as versatile molecular probes of biological systems. Nevertheless, they are not widely used for imaging purpose since their luminescence is completely quenched in aqueous environment. In this scenario, nanoencapsulation through the use of polymeric nanoparticles (NPs ) could be an effective solution to improve solubility and protection of the insoluble payload with consequent increase in bioavailability and action. Poly lac- tic-co-glycolic acid (PLGA) is a synthetic copolymer of lactic acid and glycolic acid of remarkable interest for potential applications in biomedicine; indeed, for its biodegradability and biocompatibility, it has been approved for human use both by Food and Drug Administration (FDA) and European Medicine Agency (EMA). In this thesis, we want to give several proofs of concept about the huge potentiality of PLGA nanoparticles in medical purpose. We used single emulsion methos (O/W) to encapsulate natural bioactive molecules producing planted-derived PLGA nanocarriers enabling anti-inflammatory and antioxidant activity when the polyphe- nol Oxyresveratrol has been incorporated into PLGA NPs. Moreover, an osteogenic promoting action has been observed when PLGA NPs have been embedded with Fisetin (a natural flavonoid).Since PLGA can deliver more than one payload simultaneously, we also produced PLGA nanoassemblies able to combine antibacterial activity with physical treat- ments (such as magnetic and photothermic hyperthermia). Finally, we exploited the shielding properties of PLGA to preserve the luminescence of NIR-emitting lantha- nide complexes in aqueous environment. Therefore, we produced a NIR-CPL probe based on PLGA for bioassay imaging. To summarise, during the past three years we were able to use PLGA encapsulation technology to make natural or synthetic compounds bioavailable, even if naturally water insoluble, and use the loaded nanomaterials in in-vitro experiments assessing the activity of the encapsulated material, paving the way for their application in in- vivo tests and eventual use in nanomedicine

    Assessing Coastal Sustainability: A Bayesian Approach for Modeling and Estimating a Global Index for Measuring Risk

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    Integrated Coastal Zone Management is an emerg- ing research area. The aim is to provide a global view of dif- ferent and heterogeneous aspects interacting in a geographical area. Decision Support Systems, integrating Computational Intelligence methods, can be successfully used to estimate use- ful anthropic and environmental indexes. Bayesian Networks have been widely used in the environmental science domain. In this paper a Bayesian model for estimating the Sustainable Coastal Index is presented. The designed Bayesian Network consists of 17 nodes, hierarchically organized in 4 layers. The first layer is initialized with the season and the physiographic region information. In the second layer, the first-order in- dexes, depending on raw data, of physiographic regions are computed. The third layer estimates the second-order indexes of the analyzed physiographic regions. In the fourth layer, the global Sustainable Coastal Index is inferred. Processed data refers to 13 physiographic regions in the Province of Trapani, western Sicily, Italy. Gathered data describes the environ- mental information, the agricultural, fisheries, and economi- cal behaviors of the local population and land. The Bayesian Network was trained and tested using a real dataset acquired between 2000 and 2006. The developed system presents inter- esting results

    A Modular System Oriented to the Design of Versatile Knowledge Bases for Chatbots

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    The paper illustrates a system that implements a framework, which is oriented to the development of a modular knowledge base for a conversational agent. This solution improves the flexibility of intelligent conversational agents in managing conversations. The modularity of the system grants a concurrent and synergic use of different knowledge representation techniques. According to this choice, it is possible to use the most adequate methodology for managing a conversation for a specific domain, taking into account particular features of the dialogue or the user behavior. We illustrate the implementation of a proof-of-concept prototype: a set of modules exploiting different knowledge representation methodologies and capable of managing different conversation features has been developed. Each module is automatically triggered through a component, named corpus callosum, that selects in real time the most adequate chatbot knowledge module to activate

    A Modular System Oriented to the Design of Versatile Knowledge Bases for Chatbots

    Get PDF
    The paper illustrates a system that implements a framework, which is oriented to the development of a modular knowledge base for a conversational agent. This solution improves the flexibility of intelligent conversational agents in managing conversations. The modularity of the system grants a concurrent and synergic use of different knowledge representation techniques. According to this choice, it is possible to use the most adequate methodology for managing a conversation for a specific domain, taking into account particular features of the dialogue or the user behavior. We illustrate the implementation of a proof-of-concept prototype: a set of modules exploiting different knowledge representation methodologies and capable of managing different conversation features has been developed. Each module is automatically triggered through a component, named corpus callosum, that selects in real time the most adequate chatbot knowledge module to activate

    Explainable Machine-Learning Models for COVID-19 Prognosis Prediction Using Clinical, Laboratory and Radiomic Features

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    The SARS-CoV-2 virus pandemic had devastating effects on various aspects of life: clinical cases, ranging from mild to severe, can lead to lung failure and to death. Due to the high incidence, data-driven models can support physicians in patient management. The explainability and interpretability of machine-learning models are mandatory in clinical scenarios. In this work, clinical, laboratory and radiomic features were used to train machine-learning models for COVID-19 prognosis prediction. Using Explainable AI algorithms, a multi-level explainable method was proposed taking into account the developer and the involved stakeholder (physician, and patient) perspectives. A total of 1023 radiomic features were extracted from 1589 Chest X-Ray images (CXR), combined with 38 clinical/laboratory features. After the pre-processing and selection phases, 40 CXR radiomic features and 23 clinical/laboratory features were used to train Support Vector Machine and Random Forest classifiers exploring three feature selection strategies. The combination of both radiomic, and clinical/laboratory features enabled higher performance in the resulting models. The intelligibility of the used features allowed us to validate the models' clinical findings. According to the medical literature, LDH, PaO2 and CRP were the most predictive laboratory features. Instead, ZoneEntropy and HighGrayLevelZoneEmphasis - indicative of the heterogeneity/uniformity of lung texture - were the most discriminating radiomic features. Our best predictive model, exploiting the Random Forest classifier and a signature composed of clinical, laboratory and radiomic features, achieved AUC=0.819, accuracy=0.733, specificity=0.705, and sensitivity=0.761 in the test set. The model, including a multi-level explainability, allows us to make strong clinical assumptions, confirmed by the literature insights

    Mathematical Patterns and Cognitive Architectures

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    Mathematical patterns are an important subclass of the class of patterns. The main task of this paper is examining a particular proposal concerning the nature of mathematical patterns and some elements of the cognitive architecture an agent should have to recognize them
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