journal
Journals Artificial Intelligence in Med...

Artificial Intelligence in Medicine

https://read.qxmd.com/read/38325933/overlapping-cytoplasms-segmentation-via-constrained-multi-shape-evolution-for-cervical-cancer-screening
#81
JOURNAL ARTICLE
Youyi Song, Ao Zhang, Jinglin Zhou, Yu Luo, Zhizhe Lin, Teng Zhou
Segmenting overlapping cytoplasms in cervical smear images is a clinically essential task for quantitatively measuring cell-level features to screen cervical cancer This task, however, remains rather challenging, mainly due to the deficiency of intensity (or color) information in the overlapping region Although shape prior-based models that compensate intensity deficiency by introducing prior shape information about cytoplasm are firmly established, they often yield visually implausible results, as they model shape priors only by limited shape hypotheses about cytoplasm, exploit cytoplasm-level shape priors alone, and impose no shape constraint on the resulting shape of the cytoplasm In this paper, we present an effective shape prior-based approach, called constrained multi-shape evolution, that segments all overlapping cytoplasms in the clump simultaneously by jointly evolving each cytoplasm's shape guided by the modeled shape priors We model local shape priors (cytoplasm-level) by an infinitely large shape hypothesis set which contains all possible shapes of the cytoplasm In the shape evolution, we compensate intensity deficiency for the segmentation by introducing not only the modeled local shape priors but also global shape priors (clump-level) modeled by considering mutual shape constraints of cytoplasms in the clump We also constrain the resulting shape in each evolution to be in the built shape hypothesis set for further reducing implausible segmentation results We evaluated the proposed method in two typical cervical smear datasets, and the extensive experimental results confirm its effectiveness...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38325932/combining-general-and-personal-models-for-epilepsy-detection-with-hyperdimensional-computing
#82
JOURNAL ARTICLE
Una Pale, Tomas Teijeiro, Sylvain Rheims, Philippe Ryvlin, David Atienza
Epilepsy is a highly prevalent chronic neurological disorder with great negative impact on patients' daily lives. Despite this there is still no adequate technological support to enable epilepsy detection and continuous outpatient monitoring in everyday life. Hyperdimensional (HD) computing is a promising method for epilepsy detection via wearable devices, characterized by a simpler learning process and lower memory requirements compared to other methods. In this work, we demonstrate additional avenues in which HD computing and the manner in which its models are built and stored can be used to better understand, compare and create more advanced machine learning models for epilepsy detection...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38325931/diseases-diagnosis-based-on-artificial-intelligence-and-ensemble-classification
#83
JOURNAL ARTICLE
Asmaa H Rabie, Ahmed I Saleh
BACKGROUND: In recent years, Computer Aided Diagnosis (CAD) has become an important research area that attracted a lot of researchers. In medical diagnostic systems, several attempts have been made to build and enhance CAD applications to avoid errors that can cause dangerously misleading medical treatments. The most exciting opportunity for promoting the performance of CAD system can be accomplished by integrating Artificial Intelligence (AI) in medicine. This allows the effective automation of traditional manual workflow, which is slow, inaccurate and affected by human errors...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38325930/a-computational-tumor-growth-model-experience-based-on-molecular-dynamics-point-of-view-using-deep-cellular-automata
#84
JOURNAL ARTICLE
Hossein Nikravesh Matin, Saeed Setayeshi
Cancer, as identified by the World Health Organization, stands as the second leading cause of death globally. Its intricate nature makes it challenging to study solely based on biological knowledge, often leading to expensive research endeavors. While tremendous strides have been made in understanding cancer, gaps remain, especially in predicting tumor behavior across various stages. The integration of artificial intelligence in oncology research has accelerated our insights into tumor behavior, right from its genesis to metastasis...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38325929/evaluating-the-clinical-utility-of-artificial-intelligence-assistance-and-its-explanation-on-the-glioma-grading-task
#85
JOURNAL ARTICLE
Weina Jin, Mostafa Fatehi, Ru Guo, Ghassan Hamarneh
Clinical evaluation evidence and model explainability are key gatekeepers to ensure the safe, accountable, and effective use of artificial intelligence (AI) in clinical settings. We conducted a clinical user-centered evaluation with 35 neurosurgeons to assess the utility of AI assistance and its explanation on the glioma grading task. Each participant read 25 brain MRI scans of patients with gliomas, and gave their judgment on the glioma grading without and with the assistance of AI prediction and explanation...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38325928/msef-net-multi-scale-edge-fusion-network-for-lumbosacral-plexus-segmentation-with-mr-image
#86
JOURNAL ARTICLE
Junyong Zhao, Liang Sun, Zhi Sun, Xin Zhou, Haipeng Si, Daoqiang Zhang
Nerve damage of spine areas is a common cause of disability and paralysis. The lumbosacral plexus segmentation from magnetic resonance imaging (MRI) scans plays an important role in many computer-aided diagnoses and surgery of spinal nerve lesions. Due to the complex structure and low contrast of the lumbosacral plexus, it is difficult to delineate the regions of edges accurately. To address this issue, we propose a Multi-Scale Edge Fusion Network (MSEF-Net) to fully enhance the edge feature in the encoder and adaptively fuse multi-scale features in the decoder...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38325927/prediction-on-nature-of-cancer-by-fuzzy-graphoidal-covering-number-using-artificial-neural-network
#87
JOURNAL ARTICLE
Anushree Bhattacharya, Madhumangal Pal
Predicting the chances of various types of cancers for different organs in the human body is a typical decision-making process in medicine and health. The signaling pathways have played a vital role in increasing or decreasing the possibility of the deadliest disease, cancer. To combine the pathways concept and ambiguity in the prediction techniques of such diseases, we have used the proposed research on fuzzy graphoidal covers of fuzzy graphs in this paper. Determining a path with uncertainty and shortest length is a challenging topic of graph theory, and a collection of such shortest paths maintaining specific conditions is defined as a fuzzy graphoidal cover for a fuzzy graph...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38325926/the-concordance-index-decomposition-a-measure-for-a-deeper-understanding-of-survival-prediction-models
#88
JOURNAL ARTICLE
Abdallah Alabdallah, Mattias Ohlsson, Sepideh Pashami, Thorsteinn Rögnvaldsson
The Concordance Index (C-index) is a commonly used metric in Survival Analysis for evaluating the performance of a prediction model. In this paper, we propose a decomposition of the C-index into a weighted harmonic mean of two quantities: one for ranking observed events versus other observed events, and the other for ranking observed events versus censored cases. This decomposition enables a finer-grained analysis of the relative strengths and weaknesses between different survival prediction methods. The usefulness of this decomposition is demonstrated through benchmark comparisons against classical models and state-of-the-art methods, together with the new variational generative neural-network-based method (SurVED) proposed in this paper...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38325925/a-deep-convolutional-neural-network-for-the-automatic-segmentation-of-glioblastoma-brain-tumor-joint-spatial-pyramid-module-and-attention-mechanism-network
#89
JOURNAL ARTICLE
Hengxin Liu, Jingteng Huang, Qiang Li, Xin Guan, Minglang Tseng
This study proposes a deep convolutional neural network for the automatic segmentation of glioblastoma brain tumors, aiming sat replacing the manual segmentation method that is both time-consuming and labor-intensive. There are many challenges for automatic segmentation to finely segment sub-regions from multi-sequence magnetic resonance images because of the complexity and variability of glioblastomas, such as the loss of boundary information, misclassified regions, and subregion size. To overcome these challenges, this study introduces a spatial pyramid module and attention mechanism to the automatic segmentation algorithm, which focuses on multi-scale spatial details and context information...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38325924/horda-learning-higher-order-structure-information-for-predicting-rna-disease-associations
#90
JOURNAL ARTICLE
Julong Li, Jianrui Chen, Zhihui Wang, Xiujuan Lei
CircRNA and miRNA are crucial non-coding RNAs, which are associated with biological diseases. Exploring the associations between RNAs and diseases often requires a significant time and financial investments, which has been greatly alleviated and improved with the application of deep learning methods in bioinformatics. However, existing methods often fail to achieve higher accuracy and cannot be universal between multiple RNAs. Moreover, complex RNA-disease associations hide important higher-order topology information...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38325923/stacked-deep-learning-approach-for-efficient-sars-cov-2-detection-in-blood-samples
#91
JOURNAL ARTICLE
Wu Wang, Fouzi Harrou, Abdelkader Dairi, Ying Sun
Identifying COVID-19 through blood sample analysis is crucial in managing the disease and improving patient outcomes. Despite its advantages, the current test demands certified laboratories, expensive equipment, trained personnel, and 3-4 h for results, with a notable false-negative rate of 15%-20%. This study proposes a stacked deep-learning approach for detecting COVID-19 in blood samples to distinguish uninfected individuals from those infected with the virus. Three stacked deep learning architectures, namely the StackMean, StackMax, and StackRF algorithms, are introduced to improve the detection quality of single deep learning models...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38325922/a-novel-method-leveraging-time-series-data-to-improve-subphenotyping-and-application-in-critically-ill-patients-with-covid-19
#92
JOURNAL ARTICLE
Wonsuk Oh, Pushkala Jayaraman, Pranai Tandon, Udit S Chaddha, Patricia Kovatch, Alexander W Charney, Benjamin S Glicksberg, Girish N Nadkarni
Computational subphenotyping, a data-driven approach to understanding disease subtypes, is a prominent topic in medical research. Numerous ongoing studies are dedicated to developing advanced computational subphenotyping methods for cross-sectional data. However, the potential of time-series data has been underexplored until now. Here, we propose a Multivariate Levenshtein Distance (MLD) that can account for address correlation in multiple discrete features over time-series data. Our algorithm has two distinct components: it integrates an optimal threshold score to enhance the sensitivity in discriminating between pairs of instances, and the MLD itself...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38325921/advanced-decision-support-system-for-individuals-with-diabetes-on-multiple-daily-injections-therapy-using-reinforcement-learning-and-nearest-neighbors-in-silico-and-clinical-results
#93
JOURNAL ARTICLE
Adnan Jafar, Melissa-Rosina Pasqua, Byron Olson, Ahmad Haidar
Many individuals with diabetes on multiple daily insulin injections therapy use carbohydrate ratios (CRs) and correction factors (CFs) to determine mealtime and correction insulin boluses. The CRs and CFs vary over time due to physiological changes in individuals' response to insulin. Errors in insulin dosing can lead to life-threatening abnormal glucose levels, increasing the risk of retinopathy, neuropathy, and nephropathy. Here, we present a novel learning algorithm that uses Q-learning to track optimal CRs and uses nearest-neighbors based Q-learning to track optimal CFs...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38325920/semi-supervised-image-segmentation-using-a-residual-driven-mean-teacher-and-an-exponential-dice-loss
#94
JOURNAL ARTICLE
Chenyang Mei, Xiaoguo Yang, Mi Zhou, Shaodan Zhang, Hao Chen, Xiaokai Yang, Lei Wang
Semi-supervised segmentation plays an important role in computer vision and medical image analysis and can alleviate the burden of acquiring abundant expert-annotated images. In this paper, we developed a residual-driven semi-supervised segmentation method (termed RDMT) based on the classical mean teacher (MT) framework by introducing a novel model-level residual perturbation and an exponential Dice (eDice) loss. The introduced perturbation was integrated into the exponential moving average (EMA) scheme to enhance the performance of the MT, while the eDice loss was used to improve the detection sensitivity of a given network to object boundaries...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38325919/contrastive-image-adaptation-for-acquisition-shift-reduction-in-medical-imaging
#95
JOURNAL ARTICLE
Clément Hognon, Pierre-Henri Conze, Vincent Bourbonne, Olivier Gallinato, Thierry Colin, Vincent Jaouen, Dimitris Visvikis
The domain shift, or acquisition shift in medical imaging, is responsible for potentially harmful differences between development and deployment conditions of medical image analysis techniques. There is a growing need in the community for advanced methods that could mitigate this issue better than conventional approaches. In this paper, we consider configurations in which we can expose a learning-based pixel level adaptor to a large variability of unlabeled images during its training, i.e. sufficient to span the acquisition shift expected during the training or testing of a downstream task model...
February 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38184363/optimisation-based-modelling-for-explainable-lead-discovery-in-malaria
#96
JOURNAL ARTICLE
Yutong Li, Jonathan Cardoso-Silva, John M Kelly, Michael J Delves, Nicholas Furnham, Lazaros G Papageorgiou, Sophia Tsoka
BACKGROUND: The search for new antimalarial treatments is urgent due to growing resistance to existing therapies. The Open Source Malaria (OSM) project offers a promising starting point, having extensively screened various compounds for their effectiveness. Further analysis of the chemical space surrounding these compounds could provide the means for innovative drugs. METHODS: We report an optimisation-based method for quantitative structure-activity relationship (QSAR) modelling that provides explainable modelling of ligand activity through a mathematical programming formulation...
January 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38184362/an-in-depth-survey-on-deep-learning-based-motor-imagery-electroencephalogram-eeg-classification
#97
REVIEW
Xianheng Wang, Veronica Liesaputra, Zhaobin Liu, Yi Wang, Zhiyi Huang
Electroencephalogram (EEG)-based Brain-Computer Interfaces (BCIs) build a communication path between human brain and external devices. Among EEG-based BCI paradigms, the most commonly used one is motor imagery (MI). As a hot research topic, MI EEG-based BCI has largely contributed to medical fields and smart home industry. However, because of the low signal-to-noise ratio (SNR) and the non-stationary characteristic of EEG data, it is difficult to correctly classify different types of MI-EEG signals. Recently, the advances in Deep Learning (DL) significantly facilitate the development of MI EEG-based BCIs...
January 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38184361/stern-attention-driven-spatial-transformer-network-for-abnormality-detection-in-chest-x-ray-images
#98
JOURNAL ARTICLE
Joana Rocha, Sofia Cardoso Pereira, João Pedrosa, Aurélio Campilho, Ana Maria Mendonça
Chest X-ray scans are frequently requested to detect the presence of abnormalities, due to their low-cost and non-invasive nature. The interpretation of these images can be automated to prioritize more urgent exams through deep learning models, but the presence of image artifacts, e.g. lettering, often generates a harmful bias in the classifiers and an increase of false positive results. Consequently, healthcare would benefit from a system that selects the thoracic region of interest prior to deciding whether an image is possibly pathologic...
January 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38184360/bgrl-basal-ganglia-inspired-reinforcement-learning-based-framework-for-deep-brain-stimulators
#99
JOURNAL ARTICLE
Harsh Agarwal, Heena Rathore
Deep Brain Stimulation (DBS) is an implantable medical device used for electrical stimulation to treat neurological disorders. Traditional DBS devices provide fixed frequency pulses, but personalized adjustment of stimulation parameters is crucial for optimal treatment. This paper introduces a Basal Ganglia inspired Reinforcement Learning (BGRL) approach, incorporating a closed-loop feedback mechanism to suppress neural synchrony during neurological fluctuations. The BGRL approach leverages the resemblance between the Basal Ganglia region of brain by incorporating the actor-critic architecture of reinforcement learning (RL)...
January 2024: Artificial Intelligence in Medicine
https://read.qxmd.com/read/38184359/fit-graph-a-multi-grained-evolutionary-graph-based-framework-for-disease-diagnosis
#100
JOURNAL ARTICLE
Zizhu Liu, Qing Cao, Nan Du, Huizhen Shu, Erheng Zhong, Nan Jiang, Qiaoran Chen, Ying Shen, Kang Chen
Early assessment, with the help of machine learning methods, can aid clinicians in optimizing the diagnosis and treatment process, allowing patients to receive critical treatment time. Due to the advantages of effective information organization and interpretable reasoning, knowledge graph-based methods have become one of the most widely used machine learning algorithms for this task. However, due to a lack of effective organization and use of multi-granularity and temporal information, current knowledge graph-based approaches are hard to fully and comprehensively exploit the information contained in medical records, restricting their capacity to make superior quality diagnoses...
January 2024: Artificial Intelligence in Medicine
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