journal
Journals Artificial Intelligence in Med...

Artificial Intelligence in Medicine

https://read.qxmd.com/read/38643592/the-ai-ethics-of-digital-covid-19-diagnosis-and-their-legal-medical-technological-and-operational-managerial-implications
#1
JOURNAL ARTICLE
Christina C Bartenschlager, Ulrich M Gassner, Christoph Römmele, Jens O Brunner, Kerstin Schlögl-Flierl, Paula Ziethmann
The COVID-19 pandemic has given rise to a broad range of research from fields alongside and beyond the core concerns of infectiology, epidemiology, and immunology. One significant subset of this work centers on machine learning-based approaches to supporting medical decision-making around COVID-19 diagnosis. To date, various challenges, including IT issues, have meant that, notwithstanding this strand of research on digital diagnosis of COVID-19, the actual use of these methods in medical facilities remains incipient at best, despite their potential to relieve pressure on scarce medical resources, prevent instances of infection, and help manage the difficulties and unpredictabilities surrounding the emergence of new mutations...
April 16, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38640703/automated-detection-of-myocardial-infarction-based-on-an-improved-state-refinement-module-for-lstm-gru
#2
JOURNAL ARTICLE
Jibin Wang, Xingtian Guo
Myocardial infarction (MI) is a common cardiovascular disease caused by the blockages of coronary arteries. The visual inspection of electrocardiogram (ECG) is the main diagnosis pattern, while it is taxing and time-consuming. Motivated from state refinement module for long short term memory (SRM-LSTM), we proposed two improved state refinement frameworks based on LSTM and gated recurrent unit (GRU) called ISRM-LSTM and ISRM-GRU. Both are capable of adaptively refining current states of sample points in ECG with a message passing mechanism than existing LSTM...
April 5, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38632030/application-of-machine-learning-in-affordable-and-accessible-insulin-management-for-type-1-and-2-diabetes-a-comprehensive-review
#3
REVIEW
Maryam Eghbali-Zarch, Sara Masoud
Proper insulin management is vital for maintaining stable blood sugar levels and preventing complications associated with diabetes. However, the soaring costs of insulin present significant challenges to ensuring affordable management. This paper conducts a comprehensive review of current literature on the application of machine learning (ML) in insulin management for diabetes patients, particularly focusing on enhancing affordability and accessibility within the United States. The review encompasses various facets of insulin management, including dosage calculation and response, prediction of blood glucose and insulin sensitivity, initial insulin estimation, resistance prediction, treatment adherence, complications, hypoglycemia prediction, and lifestyle modifications...
April 4, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38593684/deep-learning-supported-echocardiogram-analysis-a-comprehensive-review
#4
REVIEW
Sanjeevi G, Uma Gopalakrishnan, Rahul Krishnan Parthinarupothi, Thushara Madathil
An echocardiogram is a sophisticated ultrasound imaging technique employed to diagnose heart conditions. The transthoracic echocardiogram, one of the most prevalent types, is instrumental in evaluating significant cardiac diseases. However, interpreting its results heavily relies on the clinician's expertise. In this context, artificial intelligence has emerged as a vital tool for helping clinicians. This study critically analyzes key state-of-the-art research that uses deep learning techniques to automate transthoracic echocardiogram analysis and support clinical judgments...
April 4, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38593683/harnessing-machine-learning-for-eeg-signal-analysis-innovations-in-depth-of-anaesthesia-assessment
#5
REVIEW
Thomas Schmierer, Tianning Li, Yan Li
Anaesthesia, crucial to surgical practice, is undergoing renewed scrutiny due to the integration of artificial intelligence in its medical use. The precise control over the temporary loss of consciousness is vital to ensure safe, pain-free procedures. Traditional methods of depth of anaesthesia (DoA) assessment, reliant on physical characteristics, have proven inconsistent due to individual variations. In response, electroencephalography (EEG) techniques have emerged, with indices such as the Bispectral Index offering quantifiable assessments...
April 4, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38593682/learnable-weight-initialization-for-volumetric-medical-image-segmentation
#6
JOURNAL ARTICLE
Shahina Kunhimon, Abdelrahman Shaker, Muzammal Naseer, Salman Khan, Fahad Shahbaz Khan
Hybrid volumetric medical image segmentation models, combining the advantages of local convolution and global attention, have recently received considerable attention. While mainly focusing on architectural modifications, most existing hybrid approaches still use conventional data-independent weight initialization schemes which restrict their performance due to ignoring the inherent volumetric nature of the medical data. To address this issue, we propose a learnable weight initialization approach that utilizes the available medical training data to effectively learn the contextual and structural cues via the proposed self-supervised objectives...
April 3, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38640702/learning-the-cellular-activity-representation-based-on-gene-regulatory-networks-for-prediction-of-tumor-response-to-drugs
#7
JOURNAL ARTICLE
Xinping Xie, Fengting Wang, Guanfu Wang, Weiwei Zhu, Xiaodong Du, Hongqiang Wang
Predicting the response of tumor cells to anti-tumor drugs is critical to realizing cancer precision medicine. Currently, most existing methods ignore the regulatory relationships between genes and thus have unsatisfactory predictive performance. In this paper, we propose to predict anti-tumor drug efficacy via learning the activity representation of tumor cells based on a priori knowledge of gene regulation networks (GRNs). Specifically, the method simulates the cellular biosystem by synthesizing a cell-gene activity network and then infers a new low-dimensional activity representation for tumor cells from the raw high-dimensional expression profile...
April 2, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38583369/towards-classification-and-comprehensive-analysis-of-ai-based-covid-19-diagnostic-techniques-a-survey
#8
REVIEW
Amna Kosar, Muhammad Asif, Maaz Bin Ahmad, Waseem Akram, Khalid Mahmood, Saru Kumari
The unpredictable pandemic came to light at the end of December 2019, known as the novel coronavirus, also termed COVID-19, identified by the World Health Organization (WHO). The virus first originated in Wuhan (China) and rapidly affected most of the world's population. This outbreak's impact is experienced worldwide because it causes high mortality risk, many cases, and economic falls. Around the globe, the total number of cases and deaths reported till November 12, 2022, were >600 million and 6.6 million, respectively...
April 1, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38564880/ontology-based-decision-support-systems-for-diabetes-nutrition-therapy-a-systematic-literature-review
#9
REVIEW
Daniele Spoladore, Martina Tosi, Erna Cecilia Lorenzini
Diabetes is a non-communicable disease that has reached epidemic proportions, affecting 537 million people globally. Artificial Intelligence can support patients or clinicians in diabetes nutrition therapy - the first medical therapy in most cases of Type 1 and Type 2 diabetes. In particular, ontology-based recommender and decision support systems can deliver a computable representation of experts' knowledge, thus delivering patient-tailored nutritional recommendations or supporting clinical personnel in identifying the most suitable diet...
March 30, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38555850/challenges-and-strategies-for-wide-scale-artificial-intelligence-ai-deployment-in-healthcare-practices-a-perspective-for-healthcare-organizations
#10
JOURNAL ARTICLE
Pouyan Esmaeilzadeh
Healthcare organizations have realized that Artificial intelligence (AI) can provide a competitive edge through personalized patient experiences, improved patient outcomes, early diagnosis, augmented clinician capabilities, enhanced operational efficiencies, or improved medical service accessibility. However, deploying AI-driven tools in the healthcare ecosystem could be challenging. This paper categorizes AI applications in healthcare and comprehensively examines the challenges associated with deploying AI in medical practices at scale...
March 30, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38579437/two-step-interpretable-modeling-of-icu-ais
#11
JOURNAL ARTICLE
G Lancia, M R J Varkila, O L Cremer, C Spitoni
We present a novel methodology for integrating high resolution longitudinal data with the dynamic prediction capabilities of survival models. The aim is two-fold: to improve the predictive power while maintaining the interpretability of the models. To go beyond the black box paradigm of artificial neural networks, we propose a parsimonious and robust semi-parametric approach (i.e., a landmarking competing risks model) that combines routinely collected low-resolution data with predictive features extracted from a convolutional neural network, that was trained on high resolution time-dependent information...
March 28, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38555849/pathways-to-democratized-healthcare-envisioning-human-centered-ai-as-a-service-for-customized-diagnosis-and-rehabilitation
#12
JOURNAL ARTICLE
Tommaso Turchi, Giuseppe Prencipe, Alessio Malizia, Silvia Filogna, Francesco Latrofa, Giuseppina Sgandurra
The ongoing digital revolution in the healthcare sector, emphasized by bodies like the US Food and Drug Administration (FDA), is paving the way for a shift towards person-centric healthcare models. These models consider individual needs, turning patients from passive recipients to active participants. A key factor in this shift is Artificial Intelligence (AI), which has the capacity to revolutionize healthcare delivery due to its ability to personalize it. With the rise of software in healthcare and the proliferation of the Internet of Things (IoT), a surge of digital data is being produced...
March 26, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38552379/iafps-mv-bitcn-predicting-antifungal-peptides-using-self-attention-transformer-embedding-and-transform-evolutionary-based-multi-view-features-with-bidirectional-temporal-convolutional-networks
#13
JOURNAL ARTICLE
Shahid Akbar, Quan Zou, Ali Raza, Fawaz Khaled Alarfaj
Globally, fungal infections have become a major health concern in humans. Fungal diseases generally occur due to the invading fungus appearing on a specific portion of the body and becoming hard for the human immune system to resist. The recent emergence of COVID-19 has intensely increased different nosocomial fungal infections. The existing wet-laboratory-based medications are expensive, time-consuming, and may have adverse side effects on normal cells. In the last decade, peptide therapeutics have gained significant attention due to their high specificity in targeting affected cells without affecting healthy cells...
March 26, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38574636/cracking-the-chronic-pain-code-a-scoping-review-of-artificial-intelligence-in-chronic-pain-research
#14
REVIEW
Md Asif Khan, Ryan G L Koh, Sajjad Rashidiani, Theodore Liu, Victoria Tucci, Dinesh Kumbhare, Thomas E Doyle
OBJECTIVE: The aim of this review is to identify gaps and provide a direction for future research in the utilization of Artificial Intelligence (AI) in chronic pain (CP) management. METHODS: A comprehensive literature search was conducted using various databases, including Ovid MEDLINE, Web of Science Core Collection, IEEE Xplore, and ACM Digital Library. The search was limited to studies on AI in CP research, focusing on diagnosis, prognosis, clinical decision support, self-management, and rehabilitation...
March 21, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38547777/hierarchical-medical-image-report-adversarial-generation-with-hybrid-discriminator
#15
JOURNAL ARTICLE
Junsan Zhang, Ming Cheng, Qiaoqiao Cheng, Xiuxuan Shen, Yao Wan, Jie Zhu, Mengxuan Liu
BACKGROUND AND OBJECTIVES: Generating coherent reports from medical images is an important task for reducing doctors' workload. Unlike traditional image captioning tasks, the task of medical image report generation faces more challenges. Current models for generating reports from medical images often fail to characterize some abnormal findings, and some models generate reports with low quality. In this study, we propose a model to generate high-quality reports from medical images. METHODS: In this paper, we propose a model called Hybrid Discriminator Generative Adversarial Network (HDGAN), which combines Generative Adversarial Network (GAN) with Reinforcement Learning (RL)...
March 21, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38555848/de-identification-of-clinical-free-text-using-natural-language-processing-a-systematic-review-of-current-approaches
#16
REVIEW
Aleksandar Kovačević, Bojana Bašaragin, Nikola Milošević, Goran Nenadić
BACKGROUND: Electronic health records (EHRs) are a valuable resource for data-driven medical research. However, the presence of protected health information (PHI) makes EHRs unsuitable to be shared for research purposes. De-identification, i.e. the process of removing PHI is a critical step in making EHR data accessible. Natural language processing has repeatedly demonstrated its feasibility in automating the de-identification process. OBJECTIVES: Our study aims to provide systematic evidence on how the de-identification of clinical free text written in English has evolved in the last thirteen years, and to report on the performances and limitations of the current state-of-the-art systems for the English language...
March 20, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38564879/cellular-data-extraction-from-multiplexed-brain-imaging-data-using-self-supervised-dual-loss-adaptive-masked-autoencoder
#17
JOURNAL ARTICLE
Son T Ly, Bai Lin, Hung Q Vo, Dragan Maric, Badrinath Roysam, Hien V Nguyen
Reliable large-scale cell detection and segmentation is the fundamental first step to understanding biological processes in the brain. The ability to phenotype cells at scale can accelerate preclinical drug evaluation and system-level brain histology studies. The impressive advances in deep learning offer a practical solution to cell image detection and segmentation. Unfortunately, categorizing cells and delineating their boundaries for training deep networks is an expensive process that requires skilled biologists...
March 15, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38579438/monitoring-multistage-healthcare-processes-using-state-space-models-and-a-machine-learning-based-framework
#18
JOURNAL ARTICLE
Ali Yeganeh, Arne Johannssen, Nataliya Chukhrova, Mohammad Rasouli
Monitoring healthcare processes, such as surgical outcomes, with a keen focus on detecting changes and unnatural conditions at an early stage is crucial for healthcare professionals and administrators. In line with this goal, control charts, which are the most popular tool in the field of Statistical Process Monitoring, are widely employed to monitor therapeutic processes. Healthcare processes are often characterized by a multistage structure in which several components, states or stages form the final products or outcomes...
March 10, 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38553169/gcngat-drug-disease-association-prediction-based-on-graph-convolution-neural-network-and-graph-attention-network
#19
JOURNAL ARTICLE
Runtao Yang, Yao Fu, Qian Zhang, Lina Zhang
Predicting drug-disease associations can contribute to discovering new therapeutic potentials of drugs, and providing important association information for new drug research and development. Many existing drug-disease association prediction methods have not distinguished relevant background information for the same drug targeted to different diseases. Therefore, this paper proposes a drug-disease association prediction model based on graph convolutional network and graph attention network (GCNGAT) to reposition marketed drugs under the distinguishment of background information...
April 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38553168/trustworthy-clinical-ai-solutions-a-unified-review-of-uncertainty-quantification-in-deep-learning-models-for-medical-image-analysis
#20
REVIEW
Benjamin Lambert, Florence Forbes, Senan Doyle, Harmonie Dehaene, Michel Dojat
The full acceptance of Deep Learning (DL) models in the clinical field is rather low with respect to the quantity of high-performing solutions reported in the literature. End users are particularly reluctant to rely on the opaque predictions of DL models. Uncertainty quantification methods have been proposed in the literature as a potential solution, to reduce the black-box effect of DL models and increase the interpretability and the acceptability of the result by the final user. In this review, we propose an overview of the existing methods to quantify uncertainty associated with DL predictions...
April 2024: Artificial Intelligence in Medicine
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