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Objectives: Algorithms for fracture detection are spreading in clinical practice, but the use of X-ray-only ground truth can induce bias in their evaluation. This study assessed radiologists' performances to detect wrist and hand fractures on radiographs, using a commercially-available algorithm, compared to a computerized tomography (CT) ground truth.
Methods: Post-traumatic hand and wrist CT and concomitant X-ray examinations were retrospectively gathered. Radiographs were labeled based on CT findings. The dataset was composed of 296 consecutive cases: 118 normal (39.9%), 178 pathological (60.1%) with a total of 267 fractures visible in CT. Twenty-three radiologists with various levels of experience reviewed all radiographs without AI, then using it, blinded towards CT results.
Results: Using AI improved radiologists' sensitivity (Se, 0.658 to 0.703, p < 0.0001) and negative predictive value (NPV, 0.585 to 0.618, p < 0.0001), without affecting their specificity (Sp, 0.885 vs 0.891, p = 0.91) or positive predictive value (PPV, 0.887 vs 0.899, p = 0.08). On the radiographic dataset, based on the CT ground truth, stand-alone AI performances were 0.771 (Se), 0.898 (Sp), 0.684 (NPV), 0.915 (PPV), and 0.764 (AUROC) which were lower than previously reported, suggesting a potential underestimation of the number of missed fractures in the AI literature.
Conclusions: AI enabled radiologists to improve their sensitivity and negative predictive value for wrist and hand fracture detection on radiographs, without affecting their specificity or positive predictive value, compared to a CT-based ground truth. Using CT as gold standard for X-ray labels is innovative, leading to algorithm performance poorer than reported elsewhere, but probably closer to clinical reality.
Clinical Relevance Statement: Using an AI algorithm significantly improved radiologists' sensitivity and negative predictive value in detecting wrist and hand fractures on radiographs, with ground truth labels based on CT findings.
Key Points: • Using CT as a ground truth for labeling X-rays is new in AI literature, and led to algorithm performance significantly poorer than reported elsewhere (AUROC: 0.764), but probably closer to clinical reality. • AI enabled radiologists to significantly improve their sensitivity (+ 4.5%) and negative predictive value (+ 3.3%) for the detection of wrist and hand fractures on X-rays. • There was no significant change in terms of specificity or positive predictive value.
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http://dx.doi.org/10.1007/s00330-023-10380-1 | DOI Listing |
J Med Imaging (Bellingham)
September 2025
Otto von Guericke University, Institute for Medical Engineering and Research Campus STIMULATE, Magdeburg, Germany.
Purpose: The combination of multi-layer flat panel detector (FPDT) X-ray imaging and physics-based material decomposition algorithms allows for the removal of anatomical structures. However, the reliability of these algorithms may be compromised by unaccounted materials or scattered radiation.
Approach: We investigated the two-material decomposition performance of a multi-layer FPDT in the context of 2D chest radiography without and with a 13:1 anti-scatter grid employed.
Sci Total Environ
September 2025
OHM Advisors, Environmental & Water Resources Group, 34,000 Plymouth Road, Livonia, MI 48150, United States of America.
This field study evaluates the effectiveness of an optical indicator parameter called Tryptophan-like fluorescence (TLF) combined with other water quality parameters to predict E. coli concentrations. Commercially available multi-parameter sondes measuring TLF were deployed upstream and downstream, of five active combined sewer overflow regulators located within a 1.
View Article and Find Full Text PDFCureus
August 2025
Department of Prosthodontics, Sibar Institute of Dental Sciences, Guntur, IND.
Introduction: This study aimed to assess and compare the precision of interocclusal registration using digital intraoral scanners and conventional materials. Specifically, it evaluated the accuracy of two commercially available intraoral scanners, examined the precision of two conventional interocclusal registration materials, and compared their outcomes to determine their relative effectiveness in clinical practice.
Materials And Methods: This in vivo study was conducted in the Department of Prosthodontics on 12 patients with Angle's Class I occlusion, who were divided into four groups based on the technique used for interocclusal registration.
Diabetes Res Clin Pract
September 2025
Department of Internal Medicine, Division of Endocrinology, University of Texas Southwestern Medical Center, 5323 Harry Hines Blvd, Dallas, TX 75390, USA. Electronic address:
Aims: Automated insulin delivery (AID) systems are first-line therapy for type 1 diabetes, but commercially available AIDs in the United States are not approved for pregnancy. We aimed to compare glycemic control achieved during pregnancy by people with type 1 diabetes using AIDs versus standard of care therapy (multiple daily injections and sensor augmented pump therapy).
Methods: This was a retrospective cohort study of people with type 1 diabetes who used a continuous glucose monitor (CGM) during pregnancy.
Data Brief
October 2025
Departamento de Tecnología Electrónica, Telecommunication Research Institute (TELMA), Universidad de Málaga, 29071 Málaga, Spain.
Smartwatches and other commercially available wrist-worn devices have become a low-cost tool which, in recent years, has gained enormous popularity for monitoring habits associated with a healthy lifestyle. In this regard, the increasing computational power of smartwatches is facilitating the integration of complex machine learning and deep learning algorithms, which implement manual activity recognizers based on the inertial sensor signals that these wearables natively include. One specific application of such human activity recognition (HAR) systems is the monitoring of toothbrushing, aimed at fostering oral health habits among the population.
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