9 results on '"Blasimme A"'
Search Results
2. Unlock digital health promotion in LMICs to benefit the youth.
- Author
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Ferretti, Agata, Vayena, Effy, and Blasimme, Alessandro
- Published
- 2023
- Full Text
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3. Beyond high hopes: A scoping review of the 2019–2021 scientific discourse on machine learning in medical imaging.
- Author
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Nittas, Vasileios, Daniore, Paola, Landers, Constantin, Gille, Felix, Amann, Julia, Hubbs, Shannon, Puhan, Milo Alan, Vayena, Effy, and Blasimme, Alessandro
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- 2023
- Full Text
- View/download PDF
4. Expectations and attitudes towards medical artificial intelligence: A qualitative study in the field of stroke.
- Author
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Amann, Julia, Vayena, Effy, Ormond, Kelly E., Frey, Dietmar, Madai, Vince I., and Blasimme, Alessandro
- Subjects
CLINICAL decision support systems ,MACHINE learning ,ARTIFICIAL intelligence ,ATTITUDES toward technology ,MEDICAL personnel ,NETWORK governance - Abstract
Introduction: Artificial intelligence (AI) has the potential to transform clinical decision-making as we know it. Powered by sophisticated machine learning algorithms, clinical decision support systems (CDSS) can generate unprecedented amounts of predictive information about individuals' health. Yet, despite the potential of these systems to promote proactive decision-making and improve health outcomes, their utility and impact remain poorly understood due to their still rare application in clinical practice. Taking the example of AI-powered CDSS in stroke medicine as a case in point, this paper provides a nuanced account of stroke survivors', family members', and healthcare professionals' expectations and attitudes towards medical AI. Methods: We followed a qualitative research design informed by the sociology of expectations, which recognizes the generative role of individuals' expectations in shaping scientific and technological change. Semi-structured interviews were conducted with stroke survivors, family members, and healthcare professionals specialized in stroke based in Germany and Switzerland. Data was analyzed using a combination of inductive and deductive thematic analysis. Results: Based on the participants' deliberations, we identified four presumed roles that medical AI could play in stroke medicine, including an administrative, assistive, advisory, and autonomous role AI. While most participants held positive attitudes towards medical AI and its potential to increase accuracy, speed, and efficiency in medical decision making, they also cautioned that it is not a stand-alone solution and may even lead to new problems. Participants particularly emphasized the importance of relational aspects and raised questions regarding the impact of AI on roles and responsibilities and patients' rights to information and decision-making. These findings shed light on the potential impact of medical AI on professional identities, role perceptions, and the doctor-patient relationship. Conclusion: Our findings highlight the need for a more differentiated approach to identifying and tackling pertinent ethical and legal issues in the context of medical AI. We advocate for stakeholder and public involvement in the development of AI and AI governance to ensure that medical AI offers solutions to the most pressing challenges patients and clinicians face in clinical care. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
5. Machine learning in medicine: Addressing ethical challenges
- Author
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Vayena, Effy, Blasimme, Alessandro, and Cohen, I. Glenn
- Subjects
Machine learning -- Usage ,Health care industry -- Technology application -- Services ,Personal information -- Usage -- Safety and security measures ,Adults -- Health aspects ,Health care reform ,Nurses ,Medical students ,Artificial intelligence ,Health care industry ,Technology application ,Biological sciences - Abstract
Author(s): Effy Vayena 1,*, Alessandro Blasimme 1, I. Glenn Cohen 2 A recent United Kingdom survey reports that 63% of the adult population is uncomfortable with allowing personal data to [...]
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- 2018
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6. Machine learning in medicine: Addressing ethical challenges
- Author
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Effy Vayena, I. Glenn Cohen, and Alessandro Blasimme
- Subjects
020205 medical informatics ,Medical Doctors ,Health Care Providers ,lcsh:Medicine ,02 engineering and technology ,Public opinion ,computer.software_genre ,Medical Records ,Machine Learning ,0302 clinical medicine ,Computer software ,0202 electrical engineering, electronic engineering, information engineering ,Medicine and Health Sciences ,Data Protection Act 1998 ,Data Mining ,Confidentiality ,030212 general & internal medicine ,Medical Personnel ,Allied Health Care Professionals ,Data Processing ,Attitude to Computers ,Applied Mathematics ,Simulation and Modeling ,Software Development ,Software Engineering ,General Medicine ,3. Good health ,Professions ,Accountability ,Perspective ,Physical Sciences ,Engineering and Technology ,Psychology ,Information Technology ,Algorithms ,Biotechnology ,Medical Ethics ,Computer and Information Sciences ,Attitude of Health Personnel ,MEDLINE ,Bioengineering ,Machine learning ,Research and Analysis Methods ,Trust ,03 medical and health sciences ,Machine Learning Algorithms ,Artificial Intelligence ,Humans ,Computer Security ,Research ethics ,business.industry ,lcsh:R ,Biology and Life Sciences ,Transparency (behavior) ,Health Care ,Self Care ,Public Opinion ,People and Places ,Population Groupings ,Medical Devices and Equipment ,Artificial intelligence ,business ,computer ,Delivery of Health Care ,Mathematics - Abstract
Effy Vayena and colleagues argue that machine learning in medicine must offer data protection, algorithmic transparency, and accountability to earn the trust of patients and clinicians.
- Published
- 2018
7. Cell Reprogramming Requires Silencing of a Core Subset of Polycomb Targets
- Author
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Cesar Sommer, Alessandro Cuomo, E. Signaroldi, Pasquale Laise, Giuseppe Testa, Tiziana Bonaldi, Giancarlo Pruneri, Fridolin Gross, Giovanni Mazzarol, Giulia Fragola, Stefano Casola, Pierre-Luc Germain, Gabriele Bucci, Gustavo Mostoslavsky, Alessandro Blasimme, European Institute of Oncology [Milan] (ESMO), FIRC Institute of Molecular Oncology Foundation, IFOM, Istituto FIRC di Oncologia Molecolare (IFOM), Boston University School of Medicine (BUSM), Boston University [Boston] (BU), and Blasimme, Alessandro
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Cancer Research ,Jumonji Domain-Containing Histone Demethylases ,Somatic cell ,Cellular differentiation ,Gene Expression ,Polycomb-Group Proteins ,[SDV.GEN] Life Sciences [q-bio]/Genetics ,Cell Fate Determination ,Histones ,Mice ,Molecular Cell Biology ,Induced pluripotent stem cell ,Genetics (clinical) ,Genetics ,Stem Cells ,Polycomb Repressive Complex 2 ,Cell Differentiation ,Genomics ,Chromatin ,Cell biology ,DNA methylation ,Epigenetics ,Cellular Types ,Reprogramming ,Research Article ,lcsh:QH426-470 ,Induced Pluripotent Stem Cells ,[SDV.BC]Life Sciences [q-bio]/Cellular Biology ,macromolecular substances ,Biology ,Molecular Genetics ,Polycomb-group proteins ,Animals ,Enhancer of Zeste Homolog 2 Protein ,Gene Silencing ,Gene Networks ,[SDV.BC] Life Sciences [q-bio]/Cellular Biology ,Molecular Biology ,Ecology, Evolution, Behavior and Systematics ,Cell Proliferation ,[SDV.GEN]Life Sciences [q-bio]/Genetics ,Epigenome ,Molecular Development ,DNA Methylation ,Fibroblasts ,lcsh:Genetics ,Genome Expression Analysis ,Octamer Transcription Factor-3 ,Developmental Biology - Abstract
Transcription factor (TF)–induced reprogramming of somatic cells into induced pluripotent stem cells (iPSC) is associated with genome-wide changes in chromatin modifications. Polycomb-mediated histone H3 lysine-27 trimethylation (H3K27me3) has been proposed as a defining mark that distinguishes the somatic from the iPSC epigenome. Here, we dissected the functional role of H3K27me3 in TF–induced reprogramming through the inactivation of the H3K27 methylase EZH2 at the onset of reprogramming. Our results demonstrate that surprisingly the establishment of functional iPSC proceeds despite global loss of H3K27me3. iPSC lacking EZH2 efficiently silenced the somatic transcriptome and differentiated into tissues derived from the three germ layers. Remarkably, the genome-wide analysis of H3K27me3 in Ezh2 mutant iPSC cells revealed the retention of this mark on a highly selected group of Polycomb targets enriched for developmental regulators controlling the expression of lineage specific genes. Erasure of H3K27me3 from these targets led to a striking impairment in TF–induced reprogramming. These results indicate that PRC2-mediated H3K27 trimethylation is required on a highly selective core of Polycomb targets whose repression enables TF–dependent cell reprogramming., PLoS Genetics, 9 (2), ISSN:1553-7390, ISSN:1553-7404
- Published
- 2013
8. Open sharing of genomic data: Who does it and why?
- Author
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Haeusermann, Tobias, Greshake, Bastian, Blasimme, Alessandro, Irdam, Darja, Richards, Martin, and Vayena, Effy
- Subjects
GENOMICS ,MOLECULAR genetics ,GENETIC testing ,MEDICAL research ,PHENOTYPES - Abstract
We explored the characteristics and motivations of people who, having obtained their genetic or genomic data from Direct-To-Consumer genetic testing (DTC-GT) companies, voluntarily decide to share them on the publicly accessible web platform openSNP. The study is the first attempt to describe open data sharing activities undertaken by individuals without institutional oversight. In the paper we provide a detailed overview of the distribution of the demographic characteristics and motivations of people engaged in genetic or genomic open data sharing. The geographical distribution of the respondents showed the USA as dominant. There was no significant gender divide, the age distribution was broad, educational background varied and respondents with and without children were equally represented. Health, even though prominent, was not the respondents’ primary or only motivation to be tested. As to their motivations to openly share their data, 86.05% indicated wanting to learn about themselves as relevant, followed by contributing to the advancement of medical research (80.30%), improving the predictability of genetic testing (76.02%) and considering it fun to explore genotype and phenotype data (75.51%). Whereas most respondents were well aware of the privacy risks of their involvement in open genetic data sharing and considered the possibility of direct, personal repercussions troubling, they estimated the risk of this happening to be negligible. Our findings highlight the diversity of DTC-GT consumers who decide to openly share their data. Instead of focusing exclusively on health-related aspects of genetic testing and data sharing, our study emphasizes the importance of taking into account benefits and risks that stretch beyond the health spectrum. Our results thus lend further support to the call for a broader and multi-faceted conceptualization of genomic utility. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
- View/download PDF
9. Cell Reprogramming Requires Silencing of a Core Subset of Polycomb Targets.
- Author
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Fragola, Giulia, Germain, Pierre-Luc, Laise, Pasquale, Cuomo, Alessandro, Blasimme, Alessandro, Gross, Fridolin, Signaroldi, Elena, Bucci, Gabriele, Sommer, Cesar, Pruneri, Giancarlo, Mazzarol, Giovanni, Bonaldi, Tiziana, Mostoslavsky, Gustavo, Casola, Stefano, and Testa, Giuseppe
- Subjects
GENOMICS ,SOMATIC cells ,POLYCOMB group proteins ,HISTONES ,LYSINE - Abstract
Transcription factor (TF)--induced reprogramming of somatic cells into induced pluripotent stem cells (iPSC) is associated with genome-wide changes in chromatin modifications. Polycomb-mediated histone H3 lysine-27 trimethylation (H3K27me3) has been proposed as a defining mark that distinguishes the somatic from the iPSC epigenome. Here, we dissected the functional role of H3K27me3 in TF--induced reprogramming through the inactivation of the H3K27 methylase EZH2 at the onset of reprogramming. Our results demonstrate that surprisingly the establishment of functional iPSC proceeds despite global loss of H3K27me3. iPSC lacking EZH2 efficiently silenced the somatic transcriptome and differentiated into tissues derived from the three germ layers. Remarkably, the genome-wide analysis of H3K27me3 in Ezh2 mutant iPSC cells revealed the retention of this mark on a highly selected group of Polycomb targets enriched for developmental regulators controlling the expression of lineage specific genes. Erasure of H3K27me3 from these targets led to a striking impairment in TF--induced reprogramming. These results indicate that PRC2-mediated H3K27 trimethylation is required on a highly selective core of Polycomb targets whose repression enables TF--dependent cell reprogramming. [ABSTRACT FROM AUTHOR]
- Published
- 2013
- Full Text
- View/download PDF
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