Purpose: Developing large-scale, standardized radiographic registries for anterior cruciate ligament (ACL) injuries with artificial intelligence (AI) tools can enhance personalized orthopaedics. We propose deploying Artificial Intelligence for Knee Imaging Registration and Analysis (AKIRA), a trio of deep learning (DL) algorithms, to automatically classify and annotate radiographs. We hypothesize that algorithms can efficiently organize radiographs based on laterality, projection, identify implants and classify osteoarthritis (OA) grade.
Methods: A collection of 20,836 knee radiographs from all time points of treatment (mean orthopaedic follow-up 70.7 months; interquartile range [IQR]: 6.8-172 months) were aggregated from 1628 ACL-injured patients (median age 26 years [IQR: 19-42], 57% male). Three DL algorithms (EfficientNet, YOLO [You Only Look Once] and Residual Network) were employed. Radiograph laterality and projection (anterior-posterior [AP], lateral, sunrise, posterior-anterior, hip-knee-ankle and Camp-Coventry intercondylar [notch]) were labelled by a DL model. Manually provided labels of metal fixation implants were used to develop a DL object detection algorithm. The degree of OA, both as measured by specific Kellgren-Lawrence (KL) grades, as well as based on a binarized label of OA (defined as KL Grade ≥2), on standing AP radiographs were classified using a DL algorithm. Individual model performances were evaluated on a subset of images prior to the deployment of AKIRA to registry construction using all ACL radiographs.
Results: The classification algorithms showed excellent performance in classifying radiographic laterality (F1 score: 0.962-0.975) and projection (F1 score: 0.941-1.0). The object detection algorithm achieved high precision-recall (area under the precision-recall curve: 0.695-0.992) for identifying various metal fixations. The KL classifier reached concordances of 0.39-0.40, improving to 0.81-0.82 for binary OA labels. Sequential deployment of AKIRA following internal validation processed and labelled all 20,836 images with the appropriate views, implants, and the presence of OA within 88 min.
Conclusion: AKIRA effectively automated the classification and object detection in a large radiograph cohort of ACL injuries, creating an AI-enabled radiographic registry with comprehensive details on laterality, projection, implants and OA.
Study Design: Cross-sectional study.
Level Of Evidence: Level IV.
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http://dx.doi.org/10.1002/ksa.12618 | DOI Listing |
Zhong Nan Da Xue Xue Bao Yi Xue Ban
October 2024
Department of Anesthesiology, Second Affiliated Hospital of University of South China, Hengyang Hunan 421000.
Sleep disorders refer to conditions characterized by abnormal sleep duration and quality, including insomnia, sleep-disordered breathing, and fragmented sleep, and have become one of the major challenges to modern physical and mental health. The anterior cingulate cortex (ACC) is an important component of the limbic system, located between the cingulate sulcus and the callosal sulcus on the medial surface of the cerebral hemispheres, and plays a critical role in regulating autonomic movements, emotions, and pain. It is an important part of the sleep regulation system.
View Article and Find Full Text PDFCommun Biol
March 2025
Key Laboratory of Neuropharmacology and Translational Medicine of Zhejiang Province, College of Pharmaceutical Sciences, Zhejiang Chinese Medical University, Hangzhou, China.
Neuropathic pain involves complex cortical mechanisms, yet the role of the medial secondary visual cortex (V2M) remains poorly understood. We hypothesized that glutamatergic neurons in V2M (V2M) contribute to pain modulation and explored their functional involvement in both normal and neuropathic pain states. Here, we found that V2M could be activated by peripheral stimulation under normal conditions.
View Article and Find Full Text PDFEpilepsia
March 2025
Department of Physiology, Niigata University School of Medicine, Niigata, Japan.
Objective: Clinical investigators have hypothesized that interictal epileptiform discharges (IEDs) generated by hypothalamic hamartoma (HH) lead to cognitive dysfunction in patients with drug-resistant gelastic seizures. Herein we provide causal evidence supporting this hypothesis by demonstrating that excitatory neural bursts, when propagating from the HH to the mediodorsal thalamus during the encoding period, impair working memory.
Methods: By employing channelrhodopsin-2 photostimulation, we induced excessive neural excitation in Long-Evans rats, resembling IEDs, at the axon terminals of the lateral hypothalamus projecting toward the mediodorsal thalamus and prelimbic cortex.
Layer 1 of V1 has been shown to receive locomotion-related signals from the dorsal lateral geniculate (dLGN) and lateral posterior (LP) thalamic nuclei ( ). Inputs from the dLGN terminate in M2+ patches while inputs from LP target M2- interpatches ( ) suggesting that motion related signals are processed in distinct networks. Here, we investigated by calcium imaging in head-fixed awake mice whether L2/3 neurons underneath L1 M2+ and M2- modules are differentially activated by locomotion, and whether distinct networks of feedback connections from higher cortical areas to L1 may contribute to these differences.
View Article and Find Full Text PDFAn Acad Bras Cienc
March 2025
Institute of Vertebrate Paleontology and Paleoanthropology, Key Laboratory of Vertebrate Evolution and Human Origins, CAS (Chinese Academy of Sciences), Xizhimenwai Street, 142, Beijing, 100044, China.
The Wukongopteridae is an important pterosaur clade from the Yanliao Biota, combining features of basal and derived pterosaurs. So far, the Wukongopteridae consists of five species divided into three genera: Wukongopterus lii, Darwinopterus modularis, Darwinopterus linglongtaensis, Darwinopterus robustodens, and Kunpengopterus sinensis. Here we report a new species, Darwinopterus camposi sp.
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