| Literature DB >> 32601582 |
Ravleen Nagi1, Konidena Aravinda1, N Rakesh2, Rajesh Gupta1, Ajay Pal1, Amrit Kaur Mann1.
Abstract
Intelligent systems (i.e., artificial intelligence), particularly deep learning, are machines able to mimic the cognitive functions of humans to perform tasks of problem-solving and learning. This field deals with computational models that can think and act intelligently, like the human brain, and construct algorithms that can learn from data to make predictions. Artificial intelligence is becoming important in radiology due to its ability to detect abnormalities in radiographic images that are unnoticed by the naked human eye. These systems have reduced radiologists' workload by rapidly recording and presenting data, and thereby monitoring the treatment response with a reduced risk of cognitive bias. Intelligent systems have an important role to play and could be used by dentists as an adjunct to other imaging modalities in making appropriate diagnoses and treatment plans. In the field of maxillofacial radiology, these systems have shown promise for the interpretation of complex images, accurate localization of landmarks, characterization of bone architecture, estimation of oral cancer risk, and the assessment of metastatic lymph nodes, periapical pathologies, and maxillary sinus pathologies. This review discusses the clinical applications and scope of intelligent systems such as machine learning, artificial intelligence, and deep learning programs in maxillofacial imaging.Entities:
Keywords: Artificial Intelligence; Deep Learning; Machine Learning; Radiology
Year: 2020 PMID: 32601582 PMCID: PMC7314602 DOI: 10.5624/isd.2020.50.2.81
Source DB: PubMed Journal: Imaging Sci Dent ISSN: 2233-7822
Fig. 1Pictorial representation of intelligent systems (i.e., artificial intelligence, deep learning and machine learning).
Fig. 2Schematic representation of artificial neural networks, depicts various approaches to intelligent systems from the mid-1950s to 2010 and the concepts of cognitivism and connectionism.
Fig. 3Outline of the concepts and theories of intelligent systems, shows the interconnection of various layers of artificial neural networks.
Fig. 4Types of learning programs and their algorithms.
Summary of the clinical applications of intelligence systems in the existing literature in the diagnosis and interpretation of maxillofacial diseases and in various dental specialties
AI: artificial intelligence, CNN: convolutional neural network, ANN: artificial neural network, DL: deep learning, CBCT: cone-beam computed tomography, CT: computed tomography, SCC: squamous cell carcinoma, TMJ: temporomandibular joint