Keyword search (4,164 papers available)

"Li S" Authored Publications:

Title Authors PubMed ID
1 Artificial intelligence-assisted identification of condensing osteitis and idiopathic osteosclerosis on panoramic radiographs Yuksel IB; Boudesh A; Ghanbarzadehchaleshtori M; Ozsoy SC; Bahrilli S; Mohammadi R; Altindag A; 40790082
ENCS
2 Strategies to Reduce Uncertainties from the Best Available Physicochemical Parameters Used for Modeling Novel Organophosphate Esters across Multimedia Environments Xing C; Ge J; Chen R; Li S; Wang C; Zhang X; Geng Y; Jones KC; Zhu Y; 40105294
CHEMBIOCHEM
3 Electroforming of Personalized Multi-Level and Free-Form Metal Parts Utilizing Fused Deposition Modeling-Manufactured Molds Hamed H; Aghili S; Wüthrich R; Abou-Ziki JD; 38930706
ENCS
4 From wastewater to clean water: Recent advances on the removal of metronidazole, ciprofloxacin, and sulfamethoxazole antibiotics from water through adsorption and advanced oxidation processes (AOPs) Gahrouei AE; Vakili S; Zandifar A; Pourebrahimi S; 38685299
ENCS
5 The daily association between affect and alcohol use: A meta-analysis of individual participant data Dora J; Piccirillo M; Foster KT; Arbeau K; Armeli S; Auriacombe M; Bartholow B; Beltz AM; Blumenstock SM; Bold K; Bonar EE; Braitman A; Carpenter RW; Creswell KG; De Hart T; Dvorak RD; Emery N; Enkema M; Fairbairn C; Fairlie AM; Ferguson SG; Freire T; Goodman F; Gottfredson N; Halvorson M; Haroon M; Howard AL; Hussong A; Jackson KM; Jenzer T; Kelly DP; Kuczynski AM; Kuerbis A; Lee CM; Lewis M; Linden-Carmichael AN; Littlefield A; Lydon-Staley DM; Merrill JE; Miranda R; Mohr C; Read JP; Richardson C; O' 37560174
CONCORDIA
6 System Approach for Characterizing and Evaluating Factors for Occupational Health Impacts Due to Nonfatal Injuries and Illnesses for the Use in Life Cycle Assessment Huang Z; Kijko G; Scanlon K; Lloyd S; Henderson A; Fantke P; Jolliet O; Li S; 37490771
ENCS
7 Diverse geroprotectors differently affect a mechanism linking cellular aging to cellular quiescence in budding yeast Leonov A; Feldman R; Piano A; Arlia-Ciommo A; Junio JAB; Orfanos E; Tafakori T; Lutchman V; Mohammad K; Elsaser S; Orfali S; Rajen H; Titorenko VI; 35937500
BIOLOGY
8 TRAPPC11-related muscular dystrophy with hypoglycosylation of alpha-dystroglycan in skeletal muscle and brain Munot P; McCrea N; Torelli S; Manzur A; Sewry C; Chambers D; Feng L; Ala P; Zaharieva I; Ragge N; Roper H; Marton T; Cox P; Milev MP; Liang WC; Maruyama S; Nishino I; Sacher M; Phadke R; Muntoni F; 34648194
BIOLOGY
9 The Biology of Vasopressin. Sparapani S, Millet-Boureima C, Oliver J, Mu K, Hadavi P, Kalostian T, Ali N, Avelar CM, Bardies M, Barrow B, Benedikt M, Biancardi G, Bindra R, Bui L, Chihab Z, Cossitt A, Costa J, Daigneault T, Dault J, Davidson I, Dias J, Dufour E, El-Khoury S, Farhangdoost N, Forget A, Fox A, Gebrael M, Gentile MC, Geraci O, Gnanapragasam A, Gomah E, Haber E, Hamel C, Iyanker T, Kalantzis C, Kamali S, Kassardjian E, Kontos HK, Le TBU, LoScerbo D, Low YF, Mac Rae D, Maurer F, Mazhar S, Nguyen A, Nguyen-Duong K, Osborne-L 33477721
BIOLOGY
10 Glycemic extremes are related to cognitive dysfunction in children with type 1 diabetes: A meta-analysis He J; Ryder AG; Li S; Liu W; Zhu X; 29573221
PSYCHOLOGY
11 Caloric restriction extends yeast chronological lifespan via a mechanism linking cellular aging to cell cycle regulation, maintenance of a quiescent state, entry into a non-quiescent state and survival in the non-quiescent state. Leonov A, Feldman R, Piano A, Arlia-Ciommo A, Lutchman V, Ahmadi M, Elsaser S, Fakim H, Heshmati-Moghaddam M, Hussain A, Orfali S, Rajen H, Roofigari-Esfahani N, Rosanelli L, Titorenko VI 29050207
BIOLOGY
12 Guidelines for the use and interpretation of assays for monitoring autophagy (3rd edition). Klionsky DJ, Abdelmohsen K, Abe A, Abedin MJ, Abeliovich H, Acevedo Arozena A, Adachi H, Adams CM, Adams PD, Adeli K, Adhihetty PJ, Adler SG, Agam G, Agarwal R, Aghi MK, Agnello M, Agostinis P, Aguilar PV, Aguirre-Ghiso J, Airoldi EM, Ait-Si-Ali S, Akematsu T, Akporiaye ET, Al-Rubeai M, Albaiceta GM, Albanese C, Albani D, Albert ML, Aldudo J, Algül H, Alirezaei M, Alloza I, Almasan A, Almonte-Beceril M, Alnemri ES, Alonso C, Altan-Bonnet N, Altieri DC, Alvarez S, Alvarez-Erviti L, Alves S, Amadoro G, Amano 26799652
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Title:Artificial intelligence-assisted identification of condensing osteitis and idiopathic osteosclerosis on panoramic radiographs
Authors:Yuksel IBBoudesh AGhanbarzadehchaleshtori MOzsoy SCBahrilli SMohammadi RAltindag A
Link:https://pubmed.ncbi.nlm.nih.gov/40790082/
DOI:10.1038/s41598-025-15451-5
Publication:Scientific reports
Keywords:Condensing osteitisDeep learning algorithmsIdiopathic osteosclerosisPanoramic radiography
PMID:40790082 Category: Date Added:2025-08-12
Dept Affiliation: ENCS
1 Faculty of Dentistry, Department of Oral and Maxillofacial Radiology, Necmettin Erbakan University, Konya, Turkey.
2 Concordia Institute for Information Systems Engineering, Concordia University, Montreal, QC, Canada.
3 Department of Mechanical Engineering, Buali Sina University, Hamedan, Iran.
4 Faculty of Dentistry, Department of Oral and Maxillofacial Radiology, Karamanoglu Mehmetbey University, Karaman, Turkey.
5 Faculty of Dentistry, Necmettin Erbakan University, Konya, Turkey.
6 Faculty of Dentistry, Department of Oral and Maxillofacial Radiology, Necmettin Erbakan University, Konya, Turkey. alialtindag1412@gmail.com.

Description:

Idiopathic osteosclerosis (IOS) and condensing osteitis (CO) represent radiopaque lesions often detected incidentally within the jaws, posing substantial diagnostic challenges due to their overlapping radiographic characteristics. The objective of this study was to assess the diagnostic efficacy of YOLOv8 and YOLOv11 deep learning algorithms in the identification of IOS and CO lesions on panoramic radiographs. A comprehensive collection of 1,000 panoramic images was retrospectively gathered and meticulously annotated utilizing a bounding box approach by two proficient oral and maxillofacial radiologists. All images were standardized to a resolution of 640 × 640 pixels and segregated into training (70%), validation (15%), and testing (15%) subsets. The performance of the models was evaluated based on metrics including accuracy, sensitivity, precision, F1 score, and the area under the receiver operating characteristic curve (AUC). YOLOv11 achieved notable precision scores of 98.8% for IOS and 97.1% for CO, alongside F1 scores of 96.8% and 95.6%, respectively. Conversely, YOLOv8 produced precision scores of 96.6% for IOS and 91.4% for CO, with F1 scores of 94% and 90%. These findings illustrate that AI-enhanced deep learning models possess the capability to accurately identify IOS and CO lesions, thereby presenting opportunities to improve diagnostic consistency, avert unnecessary invasive procedures, and facilitate more effective treatment planning within clinical practice.





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