6 results on '"Penco, Silvia"'
Search Results
2. Disparities in Breast Cancer Diagnostics: How Radiologists Can Level the Inequalities.
- Author
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Pesapane, Filippo, Tantrige, Priyan, Rotili, Anna, Nicosia, Luca, Penco, Silvia, Bozzini, Anna Carla, Raimondi, Sara, Corso, Giovanni, Grasso, Roberto, Pravettoni, Gabriella, Gandini, Sara, and Cassano, Enrico
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BREAST tumor diagnosis ,OCCUPATIONAL roles ,HEALTH policy ,DIVERSITY & inclusion policies ,EQUALITY ,HEALTH services accessibility ,MINORITIES ,GENDER affirming care ,TELERADIOLOGY ,ARTIFICIAL intelligence ,RADIATION ,DIAGNOSTIC imaging ,LABOR supply ,CULTURAL competence ,HEALTH ,COMMUNICATION ,HEALTH equity ,PHYSICIANS ,ALGORITHMS - Abstract
Simple Summary: This paper delves into the persistent issue of unequal access to medical imaging, with a particular focus on breast cancer screening and its impact on marginalized communities and racial/ethnic minorities. Central to our discussion is the role of scientific mobility among radiologists in fostering healthcare policy changes that promote diversity and cultural competence. We propose various strategies to bridge this gap, including cultural education, sensitivity training, and diversifying the radiology workforce. These measures aim to improve communication with diverse patient groups and reduce healthcare disparities. Additionally, we explore the challenges and advantages of teleradiology as a means to extend medical imaging services to underserved areas. In the context of artificial intelligence, we emphasize the critical need to validate algorithms across diverse populations to ensure unbiased and equitable healthcare outcomes. Overall, this paper underscores the importance of international collaboration in addressing global access barriers, presenting it as a key to mitigating disparities in medical imaging access and contributing to the pursuit of equitable healthcare. Access to medical imaging is pivotal in healthcare, playing a crucial role in the prevention, diagnosis, and management of diseases. However, disparities persist in this scenario, disproportionately affecting marginalized communities, racial and ethnic minorities, and individuals facing linguistic or cultural barriers. This paper critically assesses methods to mitigate these disparities, with a focus on breast cancer screening. We underscore scientific mobility as a vital tool for radiologists to advocate for healthcare policy changes: it not only enhances diversity and cultural competence within the radiology community but also fosters international cooperation and knowledge exchange among healthcare institutions. Efforts to ensure cultural competency among radiologists are discussed, including ongoing cultural education, sensitivity training, and workforce diversification. These initiatives are key to improving patient communication and reducing healthcare disparities. This paper also highlights the crucial role of policy changes and legislation in promoting equal access to essential screening services like mammography. We explore the challenges and potential of teleradiology in improving access to medical imaging in remote and underserved areas. In the era of artificial intelligence, this paper emphasizes the necessity of validating its models across a spectrum of populations to prevent bias and achieve equitable healthcare outcomes. Finally, the importance of international collaboration is illustrated, showcasing its role in sharing insights and strategies to overcome global access barriers in medical imaging. Overall, this paper offers a comprehensive overview of the challenges related to disparities in medical imaging access and proposes actionable strategies to address these challenges, aiming for equitable healthcare delivery. [ABSTRACT FROM AUTHOR]
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- 2024
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3. How Radiomics Can Improve Breast Cancer Diagnosis and Treatment.
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Pesapane, Filippo, De Marco, Paolo, Rapino, Anna, Lombardo, Eleonora, Nicosia, Luca, Tantrige, Priyan, Rotili, Anna, Bozzini, Anna Carla, Penco, Silvia, Dominelli, Valeria, Trentin, Chiara, Ferrari, Federica, Farina, Mariagiorgia, Meneghetti, Lorenza, Latronico, Antuono, Abbate, Francesca, Origgi, Daniela, Carrafiello, Gianpaolo, and Cassano, Enrico
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RADIOMICS ,CANCER diagnosis ,CANCER relapse ,SCIENTIFIC literature ,CANCER treatment ,COMPUTER-assisted image analysis (Medicine) - Abstract
Recent technological advances in the field of artificial intelligence hold promise in addressing medical challenges in breast cancer care, such as early diagnosis, cancer subtype determination and molecular profiling, prediction of lymph node metastases, and prognostication of treatment response and probability of recurrence. Radiomics is a quantitative approach to medical imaging, which aims to enhance the existing data available to clinicians by means of advanced mathematical analysis using artificial intelligence. Various published studies from different fields in imaging have highlighted the potential of radiomics to enhance clinical decision making. In this review, we describe the evolution of AI in breast imaging and its frontiers, focusing on handcrafted and deep learning radiomics. We present a typical workflow of a radiomics analysis and a practical "how-to" guide. Finally, we summarize the methodology and implementation of radiomics in breast cancer, based on the most recent scientific literature to help researchers and clinicians gain fundamental knowledge of this emerging technology. Alongside this, we discuss the current limitations of radiomics and challenges of integration into clinical practice with conceptual consistency, data curation, technical reproducibility, adequate accuracy, and clinical translation. The incorporation of radiomics with clinical, histopathological, and genomic information will enable physicians to move forward to a higher level of personalized management of patients with breast cancer. [ABSTRACT FROM AUTHOR]
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- 2023
- Full Text
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4. Digital Twins in Radiology.
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Pesapane, Filippo, Rotili, Anna, Penco, Silvia, Nicosia, Luca, and Cassano, Enrico
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DIGITAL twins ,TELERADIOLOGY ,TECHNOLOGICAL innovations ,INDIVIDUALIZED medicine ,RADIOLOGY ,VIRTUAL reality - Abstract
A digital twin is a virtual model developed to accurately reflect a physical thing or a system. In radiology, a digital twin of a radiological device enables developers to test its characteristics, make alterations to the design or materials, and test the success or failure of the modifications in a virtual environment. Innovative technologies, such as AI and -omics sciences, may build virtual models for patients that are continuously adjustable based on live-tracked health/lifestyle parameters. Accordingly, healthcare could use digital twins to improve personalized medicine. Furthermore, the accumulation of digital twin models from real-world deployments will enable large cohorts of digital patients that may be used for virtual clinical trials and population studies. Through their further refinement, development, and application into clinical practice, digital twins could be crucial in the era of personalized medicine, revolutionizing how diseases are detected and managed. Although significant challenges remain in the development of digital twins, a structural modification to the current operating models is occurring, and radiologists can guide the introduction of such technology into healthcare. [ABSTRACT FROM AUTHOR]
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- 2022
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5. Recent Radiomics Advancements in Breast Cancer: Lessons and Pitfalls for the Next Future.
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Pesapane, Filippo, Rotili, Anna, Maria Agazzi, Giorgio, Botta, Francesca, Raimondi, Sara, Penco, Silvia, Dominelli, Valeria, Cremonesi, Marta, Alicja Jereczek-Fossa, Barbara, Carrafiello, Gianpaolo, and Cassano, Enrico
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RADIOMICS ,BREAST cancer ,MEDICAL personnel ,LYMPH node cancer ,PROGNOSIS ,NEOADJUVANT chemotherapy ,LYMPHATIC metastasis - Abstract
Radiomics is an emerging translational field of medicine based on the extraction of highdimensional data from radiological images, with the purpose to reach reliable models to be applied into clinical practice for the purposes of diagnosis, prognosis and evaluation of disease response to treatment. We aim to provide the basic information on radiomics to radiologists and clinicians who are focused on breast cancer care, encouraging cooperation with scientists to mine data for a better application in clinical practice. We investigate the workflow and clinical application of radiomics in breast cancer care, as well as the outlook and challenges based on recent studies. Currently, radiomics has the potential ability to distinguish between benign and malignant breast lesions, to predict breast cancer's molecular subtypes, the response to neoadjuvant chemotherapy and the lymph node metastases. Even though radiomics has been used in tumor diagnosis and prognosis, it is still in the research phase and some challenges need to be faced to obtain a clinical translation. In this review, we discuss the current limitations and promises of radiomics for improvement in further research. [ABSTRACT FROM AUTHOR]
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- 2021
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6. Women's perceptions and attitudes to the use of AI in breast cancer screening: a survey in a cancer referral centre.
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Pesapane, Filippo, Rotili, Anna, Valconi, Elena, Agazzi, Giorgio Maria, Montesano, Marta, Penco, Silvia, Nicosia, Luca, Bozzini, Anna, Meneghetti, Lorenza, Latronico, Antuono, Pizzamiglio, Maria, Rossero, Eleonora, Gaeta, Aurora, Raimondi, Sara, Pizzoli, Silvia Francesca Maria, Grasso, Roberto, Carrafiello, Gianpaolo, Pravettoni, Gabriella, and Cassano, Enrico
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WOMEN'S attitudes ,EARLY detection of cancer ,BREAST cancer ,ARTIFICIAL intelligence - Abstract
Objective: Although breast cancer screening can benefit from Artificial Intelligence (AI), it is still unknown whether, to which extent or under which conditions, the use of AI is going to be accepted by the general population. The aim of our study is to evaluate what the females who are eligible for breast cancer screening know about AI and how they perceive such innovation. Methods: We used a prospective survey consisting of a 11‐multiple‐choice questionnaire evaluating statistical associations with Chi‐Square‐test or Fisher‐exact‐test. Multinomial‐logistic‐regression was performed on items with more than two response categories. Odds ratio (OR) with 95% CI were computed to estimate the probability of a specific response according to patient's characteristics. Results: In the 800 analysed questionnaires, 51% of respondents confirmed to have knowledge of AI. Of these, 88% expressed a positive opinion about its use in medicine. Non‐Italian respondents were associated with the belief of having a deep awareness about AI more often than Italian respondents (OR = 1.91;95% CI[1.10–3.33]). Higher education level was associated with better opinions on the use of AI in medicine (OR = 4.69;95% CI[1.36–16.12]). According to 94% of respondents, the radiologists should always produce their own report on mammograms, whilst 77% agreed that AI should be used as a second reader. Most respondents (52%) considered that both the software developer and the radiologist should be held accountable for AI errors. Conclusions: Most of the females undergoing screening in our Institute approve the introduction of AI, although only as a support to radiologist, and not in substitution thereof. Yet, accountability in case of AI errors is still unsolved. advances in knowledge: This survey may be considered as a pilot‐study for the development of large‐scale studies to understand females's demands and concerns about AI applications in breast cancer screening. [ABSTRACT FROM AUTHOR]
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- 2023
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