| Literature DB >> 34724143 |
Ross W Filice1, Charles E Kahn2.
Abstract
The advent of deep learning has engendered renewed and rapidly growing interest in artificial intelligence (AI) in radiology to analyze images, manipulate textual reports, and plan interventions. Applications of deep learning and other AI approaches must be guided by sound medical knowledge to assure that they are developed successfully and that they address important problems in biomedical research or patient care. To date, AI has been applied to a limited number of real-world radiology applications. As AI systems become more pervasive and are applied more broadly, they will benefit from medical knowledge on a larger scale, such as that available through computer-based approaches. A key approach to represent computer-based knowledge in a particular domain is an ontology. As defined in informatics, an ontology defines a domain's terms through their relationships with other terms in the ontology. Those relationships, then, define the terms' semantics, or "meaning." Biomedical ontologies commonly define the relationships between terms and more general terms, and can express causal, part-whole, and anatomic relationships. Ontologies express knowledge in a form that is both human-readable and machine-computable. Some ontologies, such as RSNA's RadLex radiology lexicon, have been applied to applications in clinical practice and research, and may be familiar to many radiologists. This article describes how ontologies can support research and guide emerging applications of AI in radiology, including natural language processing, image-based machine learning, radiomics, and planning.Entities:
Keywords: Artificial intelligence; Controlled vocabulary; Knowledge representation; Ontology; Terminology
Mesh:
Year: 2021 PMID: 34724143 PMCID: PMC8669056 DOI: 10.1007/s10278-021-00527-1
Source DB: PubMed Journal: J Digit Imaging ISSN: 0897-1889 Impact factor: 4.903
Ontologies and vocabularies relevant to AI applications in diagnostic radiology
| Name (abbreviation) | Description | Number of entities | Web site | BioPortal ID* | Reference |
|---|---|---|---|---|---|
| Disease Ontology (DO) | A hierarchical vocabulary to classify human disease | 12,694 | disease-ontology.org | DOID | [ |
| Foundational Model of Anatomy (FMA) | A detailed ontology of human anatomy, part of which has been incorporated into RadLex | 104,721 | si.washington.edu/projects/fma | FMA | [ |
| Human Phenotype Ontology (HPO) | A structured and controlled vocabulary of the phenotypic features encountered in human hereditary and other diseases | 18,675 | human-phenotype-ontology.org | HP | [ |
| International Classification of Diseases, 10th Edition, Clinical Modification (ICD-10-CM)a | A terminology to classify diagnoses and the reason for visits in all American healthcare settings (2) | 95,209 | cdc.gov/nchs/icd | ICD10CM | [ |
| Logical Observation Identifier Names and Codes (LOINC)a | A terminology standard for health measurements, observations, and documents (2) | 247,754 | loinc.org | LOINC | [ |
| Orphanet Rare Disease Ontology (ORDO) | A structured vocabulary of more than 7000 rare diseases with relationships between diseases, genes, and other relevant features | 14,501 | ORDO | [ | |
| Phenotypic Quality Ontology, formerly Phenotype and Trait Ontology (PATO) | An ontology of phenotypic qualities (properties, attributes, or characteristics) | 2805 | obofoundry.org/ontology/pato | PATO | [ |
| Radiology Gamuts Ontology (RGO) | A set of disorders, interventions, and imaging findings with their causal relations | 16,912 | gamuts.net | GAMUTS | [ |
| Radiology Lexicon (RadLex) | A structured lexicon of radiology terms, including pertinent anatomy, diseases, and imaging findings | 46,636 | radlex.org | RADLEX | [ |
| Radiomics Ontology (RO) | An ontology of radiomics features, segmentation algorithms, and imaging filters | 458 | RO | [ | |
| Radiation Oncology Ontology (ROO) | An ontology used to query information from various data structures | 1307 | ROO | [ | |
| Radiation Oncology Structures Ontology (ROS) | Anatomic and treatment planning classes that describe commonly contoured structures for treatment planning | 417 | github.com/jebibault/Radiation-Oncology-Structures-Ontology | ROS | [ |
| Systematized Nomenclature of Medicine Clinical Terms (SNOMED CT) | A comprehensive, multilingual clinical healthcare terminology that enables consistent representation of clinical content in electronic health records | 357,533 | snomed.org | SNOMEDCT | [ |
| Units of Measurement Ontology (UO) | Metrical units for use in conjunction with PATO | 428 | obofoundry.org/ontology/uo | UO | [ |
*The “BioPortal ID” references the ontology on the NCBO BioPortal site; for example, the URL for the Disease Ontology (“DOID”) on BioPortal is https://bioportal.bioontology.org/ontologies/DOID
aICD and LOINC are not ontologies. They are controlled vocabularies, and lack relationships between terms
Fig. 1Parts of the SNOMED CT ontology are shown as a directed acyclic graph. The nodes of the graph represent an ontology’s concepts, such as papillary thyroid cancer. The is-a relationships that relate a more specific concept to a more general one are shown as heavy arrows. The graph also shows the finding site attribute, which links a disease or condition to an anatomic structure. Some of the concepts related to thyroid structure are presented
Top-level concepts of the RadLex ontology. A descendant is any concept directly or indirectly specified as a subclass (or “child”)
| Top-level concept | Number of descendants |
|---|---|
| Anatomical entity | 38,165 |
| Clinical finding | 2230 |
| Imaging observation | 1134 |
| Imaging specialty | 86 |
| Non-anatomical substance | 392 |
| Object | 403 |
| Procedure | 610 |
| Procedure step | 98 |
| Process | 35 |
| Property | 1308 |
| RadLex descriptor | 1311 |
| RadLex non-anatomical set | 7 |
| Report | 0 |
| Report component | 22 |
| Temporal entity | 4 |
Fig. 2Example of RadLex concepts. One can view the hierarchy of concepts related to gallstone in gallbladder and its associated imaging signs
Fig. 3A portion of the network of Radiology Gamuts Ontology (RGO) terms and their causal relationships displayed as a graph, limited to a subset of conditions related to the stomach. RGO concepts, such as gastric fold thickening, are the nodes, shown as solid blue circles. The green arcs between nodes represent causal relationships. The inset at lower left provides a magnified view of a demarcated portion of the graph
Number of imaging findings and diseases defined in the Radiology Gamuts Ontology by organ system and imaging modality. Entities may be listed in one or more categories
| Category | Number of imaging findings | Number of diseases |
|---|---|---|
| Breast imaging | 2 | 60 |
| Cardiac radiology | 106 | 1178 |
| Chest radiology | 286 | 2958 |
| Computed tomography | 1232 | 9081 |
| Diagnostic radiology | 1432 | 9266 |
| Gastrointestinal radiology | 363 | 2869 |
| Genitourinary radiology | 236 | 1901 |
| Head and neck radiology | 272 | 2627 |
| Musculoskeletal radiology | 719 | 4069 |
| Magnetic resonance imaging | 1042 | 6947 |
| Neuroradiology | 462 | 2767 |
| Obstetric/gynecologic radiology | 72 | 653 |
| Oncologic imaging | 65 | 736 |
| Pediatric radiology | 198 | 2449 |
| Ultrasound | 499 | 4605 |
| Vascular imaging | 172 | 1809 |
Fig. 4Radiology Gamuts Ontology’s causal knowledge and mappings to the Disease Ontology and Human Phenotype Ontology allow one to answer questions such as, “Which gastrointestinal disease(s) may cause an abnormality of the genitournary system?” The example presented shows the causal relationship from Crohn disease to bladder fistula, with corresponding hierarchical relationships of diseases and phenotypic abnormalities