| Literature DB >> 27784327 |
Jeremy L Warner1,2,3, Sandeep K Jain4,5, Mia A Levy6,4,7.
Abstract
The rise of genomically targeted therapies and immunotherapy has revolutionized the practice of oncology in the last 10-15 years. At the same time, new technologies and the electronic health record (EHR) in particular have permeated the oncology clinic. Initially designed as billing and clinical documentation systems, EHR systems have not anticipated the complexity and variety of genomic information that needs to be reviewed, interpreted, and acted upon on a daily basis. Improved integration of cancer genomic data with EHR systems will help guide clinician decision making, support secondary uses, and ultimately improve patient care within oncology clinics. Some of the key factors relating to the challenge of integrating cancer genomic data into EHRs include: the bioinformatics pipelines that translate raw genomic data into meaningful, actionable results; the role of human curation in the interpretation of variant calls; and the need for consistent standards with regard to genomic and clinical data. Several emerging paradigms for integration are discussed in this review, including: non-standardized efforts between individual institutions and genomic testing laboratories; "middleware" products that portray genomic information, albeit outside of the clinical workflow; and application programming interfaces that have the potential to work within clinical workflow. The critical need for clinical-genomic knowledge bases, which can be independent or integrated into the aforementioned solutions, is also discussed.Entities:
Mesh:
Year: 2016 PMID: 27784327 PMCID: PMC5081968 DOI: 10.1186/s13073-016-0371-3
Source DB: PubMed Journal: Genome Med ISSN: 1756-994X Impact factor: 11.117
Current status of genomic and related information
| Technologies | Applications | Challenges |
|---|---|---|
| IHC | Measuring gene overexpression | Expensive |
| Flow cytometry | Cell surface protein tagging by fluorophores, detects co-expression and loss of expression | Limited spectral frequencies of fluorophores |
| FISH | Copy number and rearrangement detection | Only works on known targets, cannot detect novel aberrations |
| Polymerase chain reaction | Confirmatory test and detection of minimal residual disease | May only be scaled to a limited number of variants |
| Gene expression panels | Production of a single score based on gene expression panel | Commercially available products are based on older datasets |
| NGS panels | Detection of somatic variants using mostly full-exon sequencing. NGS panels may vary greatly in size (25–500+ genes) | Removing spurious results, identifying VUS, presenting results to clinicians |
| WES/WGS | Sequencing of coding/all DNA, respectively | High cost, computational complexity, handling VUS, handling incidental findings |
| Circulating cell-free tumor DNA | Monitoring solid tumor heterogeneity, surveying difficult-to-reach tumors | Not yet widely accepted, no consensus on technical approach, slow turnaround, high cost |
| Washable IHC | Measuring protein expression with limited tissue sampling | Expensive technique, still experimental |
| Mass cytometry | Protein tagging by metal ion tags, detects co-expression and loss of expression | Only applicable in cases with known targets, expensive, still experimental |
| Methylation panels | Determines methylation patterns, which correlate with hypomethylating agent efficacy | Slow adoption of these panels |
FISH fluorescence in situ hybridization, IHC immunohistochemistry, NGS next-generation sequencing, VUS variants of unknown/uncertain/undetermined significance, WES whole-exome sequencing, WGS whole-genome sequencing
An example of an actionability hierarchy for identified genomic variants
| Hierarchical levela | Example scenariob |
|---|---|
| 1. Variant | 1. BRAF p.V600E mutation |
| 2. Variant | 1. BRAF p.V600K mutation |
| 3. Variant | 1. BRAF p.V600E mutation |
| 4. Variant | 1. BRAF p.V600K mutation |
| 5. Variant | 1. BRAF p.V600E mutation |
| 6. Variant | 1. BRAF p.V600E mutation |
| 7. Variant | 1. BRAF p.V600K mutation |
| 8. Variant with | 1. KMT2A rearrangement t(4;11)(q21;q23) as sole abnormality |
| 9. Variant with | 1. ABL1 p.M244V mutation |
| 10. VUS | 1. BRCA1 p.S645Y mutation |
ALL acute lymphoblastic leukemia, CML chronic myeloid leukemia, FDA Food and Drug Administration, VUS variant of unknown significance
aHierarchy of actionability of identified genomic variants, ranging from the situation with the strongest evidence base relating cause and effect (for example, treatment of the given condition with a given drug will result in an expected response) (1) to the weakest (10). For each hierarchical level, an example is provided that meets three criteria: 1) genomic variant, 2) pharmacologic agent, and 3) disease context. For simplicity, we do not further delineate disease context by status (for example, untreated, relapsed/refractory), although pharmaceutical agents are increasingly FDA-approved only for a given disease context and status
bThe examples use predicted sensitivity but predicted resistance has the equivalent hierarchy
Terminology systems that uniquely identify the genomically targeted antineoplastic drug vemurafeniba
| Terminology short name | Terminology long name (if applicable) | Definition | Unique code | Website |
|---|---|---|---|---|
| ATC | Anatomical Therapeutic Chemical classification system | vemurafenib | L01XE15 |
|
| CAS Registry Number | Chemical Abstracts Service Registry Number | vemurafenib | 918504-65-1 |
|
| ChEBI | Chemical Entities of Biological Interest | vemurafenib | CHEBI:63637 |
|
| ChEMBL | vemurafenib | CHEMBL1229517 |
| |
| ChemSpider | vemurafenib | 24747352 |
| |
| DrugBank | vemurafenib | DB08881 |
| |
| eMolecules | vemurafenib | 32176418 |
| |
| FDA UNII Code | Food and Drug Administration Unique Ingredient Identifier | vemurafenib | 207SMY3FQT |
|
| Guide to Pharmacology | IUPHAR/BPS Guide to Pharmacology | vemurafenib | 5893 |
|
| InChI | IUPAC International Chemical Identifier | vemurafenib | GPXBXXGIAQBQNI-UHFFFAOYSA-N |
|
| KEGG DRUG | Kyoto Encyclopedia of Genes and Genomes | vemurafenib | D09996 |
|
| MeSH | Medical Subject Headings | PLX4032 | C551177 |
|
| NCI Thesaurus | National Cancer Institute Thesaurus | vemurafenib | C64768 |
|
| NCI-GLOSS | NCI Dictionary of Cancer Terms | PLX4032 | CDR0000670004 |
|
| PDBe | Protein Data Bank in Europe | PLX4032 | 32 |
|
| PDQ | Physician Data Query | vemurafenib | CDR0000528954 |
|
| PubChem | vemurafenib | CID:42611257 |
| |
| RxNorm | vemurafenib | RxCUI:1147220 |
| |
| SNOMED-CT_US | Systematized Nomenclature of Medicine - Clinical Terms, US Realm | Vemurafenib (product) | SCTID:703656005 |
|
| UMLS | Unified Medical Language System | vemurafenib | C1832009 |
|
| ZINC | vemurafenib | ZINC52509366 |
|
aWhile these 21 distinct terminologies may not be exhaustive, they do illustrate the challenge of using terminology bindings in standards. Similar complexity is observed in terminologies for diseases, genes, proteins, and pathways (see Additional file 1)
Fig. 1FHIR Genomics can be used to enable multiple steps in the genomic testing and interpretation process. The figure shows a hypothetical workflow that a clinician would carry out. a First, any of a number of genetics tests are ordered electronically, and the details are transmitted to an internal or third-party lab, for example a sequencing lab. This step can be accomplished using an app such as the Diagnostic Order App or through native electronic health record (EHR) capabilities. b Second, the lab generates structured test results which are returned to the clinician within their workflow. This step can be accomplished using an app such as the Diagnostic Reporter App or through direct interfaces. c Third, results can be presented and contextualized for the clinician at the point of care through apps that can integrate clinical and genomic data, such as SMART Precision Cancer Medicine. Figure courtesy of David Kreda
Fig. 2Genomic information in the flow of cancer care. This simplified flow diagram illustrates the process of information gathering and decision making that characterizes the standard model of interventional oncology care. In particular, this model is applicable to the treatment, monitoring, and re-treatment phases of oncology care. In blue are primarily the information gathering steps, and in green are the active decision making and intervention steps. This process is inherently iterative, usually on a pre-planned schedule such as assessment of treatment response after 8 weeks of therapy, or surveillance monitoring on a quarterly basis. Each step of this process can be captured by one or more FHIR Resources/Profiles, which are shown in italics in parentheses. CDS Hooks is a special implementation of FHIR for clinical decision support purposes (see text for details)