keyword
https://read.qxmd.com/read/38485215/using-artificial-intelligence-to-improve-human-performance-efficient-retinal-disease-detection-training-with-synthetic-images
#21
JOURNAL ARTICLE
Hitoshi Tabuchi, Justin Engelmann, Fumiatsu Maeda, Ryo Nishikawa, Toshihiko Nagasawa, Tomofusa Yamauchi, Mao Tanabe, Masahiro Akada, Keita Kihara, Yasuyuki Nakae, Yoshiaki Kiuchi, Miguel O Bernabeu
BACKGROUND: Artificial intelligence (AI) in medical imaging diagnostics has huge potential, but human judgement is still indispensable. We propose an AI-aided teaching method that leverages generative AI to train students on many images while preserving patient privacy. METHODS: A web-based course was designed using 600 synthetic ultra-widefield (UWF) retinal images to teach students to detect disease in these images. The images were generated by stable diffusion, a large generative foundation model, which we fine-tuned with 6285 real UWF images from six categories: five retinal diseases (age-related macular degeneration, glaucoma, diabetic retinopathy, retinal detachment and retinal vein occlusion) and normal...
March 14, 2024: British Journal of Ophthalmology
https://read.qxmd.com/read/38484410/tdasd-generating-medically-significant-fine-grained-lung-adenocarcinoma-nodule-ct-images-based-on-stable-diffusion-models-with-limited-sample-size
#22
JOURNAL ARTICLE
Yidan Xu, Jiaqing Liang, Yaoyao Zhuo, Lei Liu, Yanghua Xiao, Lingxiao Zhou
BACKGROUND AND OBJECTIVES: Spread through air spaces (STAS) is an emerging lung cancer infiltration pattern. Predicting its spread through CT scans is crucial. However, limited STAS data makes this prediction task highly challenging. Stable diffusion is capable of generating more diverse and higher-quality images compared to traditional GAN models, surpassing the dominating GAN family models in image synthesis over the past few years. To alleviate the issue of limited STAS data, we propose a method TDASD based on stable diffusion, which is able to generate high-resolution CT images of pulmonary nodules corresponding to specific nodular signs according to the medical professionals...
March 5, 2024: Computer Methods and Programs in Biomedicine
https://read.qxmd.com/read/38482049/word-sense-disambiguation-of-acronyms-in-clinical-narratives
#23
JOURNAL ARTICLE
Daphné Chopard, Padraig Corcoran, Irena Spasić
Clinical narratives commonly use acronyms without explicitly defining their long forms. This makes it difficult to automatically interpret their sense as acronyms tend to be highly ambiguous. Supervised learning approaches to their disambiguation in the clinical domain are hindered by issues associated with patient privacy and manual annotation, which limit the size and diversity of training data. In this study, we demonstrate how scientific abstracts can be utilised to overcome these issues by creating a large automatically annotated dataset of artificially simulated global acronyms...
2024: Frontiers in digital health
https://read.qxmd.com/read/38477659/lessons-learned-in-building-expertly-annotated-multi-institution-datasets-and-hosting-the-rsna-ai-challenges
#24
JOURNAL ARTICLE
Felipe Campos Kitamura, Luciano M Prevedello, Errol Colak, Safwan S Halabi, Matthew P Lungren, Robyn Ball, Jayashree Kalpathy-Cramer, Charles E Kahn, Tyler Richards, Jason F Talbott, George Shih, Hui Ming Lin, Katherine P Andriole, Maryam Vazirabad, Bradley J Erickson, Adam E Flanders, John Mongan
"Just Accepted" papers have undergone full peer review and have been accepted for publication in Radiology: Artificial Intelligence . This article will undergo copyediting, layout, and proof review before it is published in its final version. Please note that during production of the final copyedited article, errors may be discovered which could affect the content. The Radiological Society of North America (RSNA) has held artificial intelligence competitions to tackle real-world medical imaging problems at least annually since 2017...
March 13, 2024: Radiology. Artificial intelligence
https://read.qxmd.com/read/38453662/pharmacy-based-sexually-transmitted-infection-service-implementation-considerations-a-scoping-review
#25
REVIEW
Mackenzie d'Entremont-Harris, Kathleen MacNabb, Kyle John Wilby, Tasha D Ramsey
BACKGROUND: Rates of sexually transmitted infections (STIs) are rising despite significant management efforts in traditional healthcare settings. The growing number of individuals affected by STIs demonstrates a gap in care. Pharmacy-based STI clinical services are a potential solution to improve care. OBJECTIVE: To identify and summarize research about the implementation of pharmacy-based STI services, focusing on program characteristics, barriers, facilitators, and pharmacist and patient experiences...
2024: Journal of the American Pharmacists Association: JAPhA
https://read.qxmd.com/read/38442906/development-and-validation-of-a-natural-language-processing-algorithm-to-pseudonymize-documents-in-the-context-of-a-clinical-data-warehouse
#26
JOURNAL ARTICLE
Xavier Tannier, Perceval Wajsbürt, Alice Calliger, Basile Dura, Alexandre Mouchet, Martin Hilka, Romain Bey
OBJECTIVE:  The objective of this study is to address the critical issue of deidentification of clinical reports to allow access to data for research purposes, while ensuring patient privacy. The study highlights the difficulties faced in sharing tools and resources in this domain and presents the experience of the Greater Paris University Hospitals (AP-HP for Assistance Publique-Hôpitaux de Paris) in implementing a systematic pseudonymization of text documents from its Clinical Data Warehouse...
March 5, 2024: Methods of Information in Medicine
https://read.qxmd.com/read/38440514/enhancing-laryngeal-spinocellular-carcinoma-image-security-with-dct
#27
JOURNAL ARTICLE
Raviraja Holla, D Suma
This work proposes a novel secret sharing scheme to enhance the security of Laryngeal Spinocellular Carcinoma or Laryngeal Squamous Cell Carcinoma (LSCC) images using the Discrete Cosine Transformation (DCT) as a cryptographic tool. The DCT-based secret sharing method divides LSCC images into shares, each containing DCT coefficients that represent the image's frequency components. The original image can only be reconstructed when a predefined number of shares are combined, ensuring confidentiality and preventing unauthorized access...
February 2024: Indian Journal of Otolaryngology and Head and Neck Surgery
https://read.qxmd.com/read/38429796/conditional-generative-adversarial-network-driven-radiomic-prediction-of-mutation-status-based-on-magnetic-resonance-imaging-of-breast-cancer
#28
JOURNAL ARTICLE
Zi Huai Huang, Lianghong Chen, Yan Sun, Qian Liu, Pingzhao Hu
BACKGROUND: Breast Cancer (BC) is a highly heterogeneous and complex disease. Personalized treatment options require the integration of multi-omic data and consideration of phenotypic variability. Radiogenomics aims to merge medical images with genomic measurements but encounter challenges due to unpaired data consisting of imaging, genomic, or clinical outcome data. In this study, we propose the utilization of a well-trained conditional generative adversarial network (cGAN) to address the unpaired data issue in radiogenomic analysis of BC...
March 2, 2024: Journal of Translational Medicine
https://read.qxmd.com/read/38426252/computer-vision-for-automated-seizure-detection-and-classification-a-systematic-review
#29
REVIEW
Brandon M Brown, Aidan M H Boyne, Adel M Hassan, Anthony K Allam, R James Cotton, Zulfi Haneef
Computer vision (CV) shows increasing promise as an efficient, low-cost tool for video seizure detection and classification. Here, we provide an overview of the fundamental concepts needed to understand CV and summarize the structure and performance of various model architectures used in video seizure analysis. We conduct a systematic literature review of the PubMed, Embase, and Web of Science databases from January 1, 2000 to September 15, 2023, to identify the strengths and limitations of CV seizure analysis methods and discuss the utility of these models when applied to different clinical seizure phenotypes...
March 1, 2024: Epilepsia
https://read.qxmd.com/read/38423135/barriers-and-facilitators-for-the-implementation-and-expansion-of-outpatient-parenteral-antimicrobial-therapy-systematic-review
#30
REVIEW
Solomon Ahmed Mohammed, Menino Osbert Cotta, Getnet Mengistu Assefa, Daniel Erku, Fekade Sime
BACKGROUND: Outpatient parenteral antimicrobial therapy (OPAT) program has been expanding in recent years and serves as a viable solution in reducing the shortage of hospital beds. However, the wider implementation of OPAT faces numerous challenges. This review aimed to assess implementation barriers and facilitators of OPAT services. METHODS: Studies describing barriers and facilitators to OPAT service were retrieved from PubMed, Scopus, MEDLINE, EMBASE, CINAHL, Cochrane Library, Web of Science Proceedings, International Pharmaceutical Abstracts, and PsycINFO...
February 27, 2024: Journal of Hospital Infection
https://read.qxmd.com/read/38414074/challenges-and-barriers-of-using-large-language-models-llm-such-as-chatgpt-for-diagnostic-medicine-with-a-focus-on-digital-pathology-a-recent-scoping-review
#31
REVIEW
Ehsan Ullah, Anil Parwani, Mirza Mansoor Baig, Rajendra Singh
BACKGROUND: The integration of large language models (LLMs) like ChatGPT in diagnostic medicine, with a focus on digital pathology, has garnered significant attention. However, understanding the challenges and barriers associated with the use of LLMs in this context is crucial for their successful implementation. METHODS: A scoping review was conducted to explore the challenges and barriers of using LLMs, in diagnostic medicine with a focus on digital pathology...
February 27, 2024: Diagnostic Pathology
https://read.qxmd.com/read/38403832/preserving-privacy-in-big-data-research-the-role-of-federated-learning-in-spine-surgery
#32
REVIEW
Hania Shahzad, Cole Veliky, Hai Le, Sheeraz Qureshi, Frank M Phillips, Yashar Javidan, Safdar N Khan
PURPOSE: Integrating machine learning models into electronic medical record systems can greatly enhance decision-making, patient outcomes, and value-based care in healthcare systems. Challenges related to data accessibility, privacy, and sharing can impede the development and deployment of effective predictive models in spine surgery. Federated learning (FL) offers a decentralized approach to machine learning that allows local model training while preserving data privacy, making it well-suited for healthcare settings...
February 25, 2024: European Spine Journal
https://read.qxmd.com/read/38400474/wearable-technology-for-monitoring-electrocardiograms-ecgs-in-adults-a-scoping-review
#33
REVIEW
Ekta Singh Dahiya, Anubha Manju Kalra, Andrew Lowe, Gautam Anand
In the rapidly evolving landscape of continuous electrocardiogram (ECG) monitoring systems, there is a heightened demand for non-invasive sensors capable of measuring ECGs and detecting heart rate variability (HRV) in diverse populations, ranging from cardiovascular patients to sports enthusiasts. Challenges like device accuracy, patient privacy, signal noise, and long-term safety impede the use of wearable devices in clinical practice. This scoping review aims to assess the performance and safety of novel multi-channel, sensor-based biopotential wearable devices in adults...
February 18, 2024: Sensors
https://read.qxmd.com/read/38394327/mobile-application-use-and-patient-engagement-in-total-hip-and-knee-arthroplasty
#34
JOURNAL ARTICLE
Jhase Sniderman, Ruben Monarrez, Jacob Drew, Ayesha Abdeen
» Mobile applications (MAs) are widely available for use during the perioperative period and are associated with increased adherence to rehabilitation plans, increased satisfaction with care, and considerable cost savings when used appropriately.» MAs offer surgeons and health care stakeholders the ability to collect clinical data and quality metrics that are important to value-based reimbursement models and clinical research.» Patients are willing to use wearable technology to assist with data collection as part of MAs but prefer it to be comfortable, easy to apply, and discreet...
February 1, 2024: JBJS Reviews
https://read.qxmd.com/read/38391649/volumetric-imitation-generative-adversarial-networks-for-anatomical-human-body-modeling
#35
JOURNAL ARTICLE
Jion Kim, Yan Li, Byeong-Seok Shin
Volumetric representation is a technique used to express 3D objects in various fields, such as medical applications. On the other hand, tomography images for reconstructing volumetric data have limited utilization because they contain personal information. Existing GAN-based medical image generation techniques can produce virtual tomographic images for volume reconstruction while preserving the patient's privacy. Nevertheless, these images often do not consider vertical correlations between the adjacent slices, leading to erroneous results in 3D reconstruction...
February 7, 2024: Bioengineering
https://read.qxmd.com/read/38379752/psychotherapy-artificial-intelligence-and-adolescents-ethical-aspects
#36
JOURNAL ARTICLE
Linda Alfano, Ivano Malcotti, Rosagemma Ciliberti
Artificial intelligence (AI) has rapidly advanced in various domains, including its application in psychotherapy. AI-powered psychotherapy tools present promising solutions for increasing accessibility to mental health care. However, the integration of AI in psychotherapy raises significant ethical concerns that require thorough consideration and regulation to ensure ethical practice, patient safety, and data privacy. This article discusses the ethical considerations surrounding the utilization of AI in psychotherapy, emphasizing the need for responsible implementation, patient privacy, and the human-AI interaction...
December 2023: Journal of Preventive Medicine and Hygiene
https://read.qxmd.com/read/38377795/decentralised-collaborative-and-privacy-preserving-machine-learning-for-multi-hospital-data
#37
JOURNAL ARTICLE
Congyu Fang, Adam Dziedzic, Lin Zhang, Laura Oliva, Amol Verma, Fahad Razak, Nicolas Papernot, Bo Wang
BACKGROUND: Machine Learning (ML) has demonstrated its great potential on medical data analysis. Large datasets collected from diverse sources and settings are essential for ML models in healthcare to achieve better accuracy and generalizability. Sharing data across different healthcare institutions or jurisdictions is challenging because of complex and varying privacy and regulatory requirements. Hence, it is hard but crucial to allow multiple parties to collaboratively train an ML model leveraging the private datasets available at each party without the need for direct sharing of those datasets or compromising the privacy of the datasets through collaboration...
February 19, 2024: EBioMedicine
https://read.qxmd.com/read/38373604/aedv-expert-consensus-document-on-the-organization-of-a-multidisciplinary-unit-for-patients-with-or-at-risk-of-venereal-infections
#38
J Riera Monroig, R A Feltes-Ochoa, I Quiles Melero, A Martin Gorgojo
Over the past few years, venereal or sexually transmitted infections (STIs) have been on the rise worldwide requiring additional specialized monographic consultations to specifically treat STIs. Therefore, the Spanish Academy of Dermatology and Venereology (AEDV) Research Working Group on STIs and HIV has drafted this document with the necessary requirements in terms of infrastructure, personnel, technology, specific materials for sample collection, and needs for current therapeutic options. Strict emphasis is placed on the protection of patient privacy...
February 17, 2024: Actas Dermo-sifiliográficas
https://read.qxmd.com/read/38373004/health-care-ai-and-patient-privacy-dinerstein-v-google
#39
JOURNAL ARTICLE
Mindy Nunez Duffourc, Sara Gerke
No abstract text is available yet for this article.
February 19, 2024: JAMA
https://read.qxmd.com/read/38355097/ethics-and-artificial-intelligence
#40
REVIEW
Luis Inglada Galiana, Luis Corral Gudino, Pablo Miramontes González
The relationship between ethics and artificial intelligence in medicine is a crucial and complex topic that falls within its broader context. Ethics in medical artificial intelligence (AI) involves ensuring that technologies are safe, fair, and respect patient privacy. This includes concerns about the accuracy of diagnoses provided by artificial intelligence, fairness in patient treatment, and protection of personal health data. Advances in artificial intelligence can significantly improve healthcare, from more accurate diagnoses to personalized treatments...
February 12, 2024: Revista Clínica Espanõla
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