| Literature DB >> 35893795 |
Young Kyung Ko1, Jeong-An Gim2.
Abstract
Depending on the patients' genotype, the same drug may have different efficacies or side effects. With the cost of genomic analysis decreasing and reliability of analysis methods improving, vast amount of genomic information has been made available. Several studies in pharmacology have been based on genomic information to select the optimal drug, determine the dose, predict efficacy, and prevent side effects. This paper reviews the tissue specificity and genomic information of cancer. If the tissue specificity of cancer is low, cancer is induced in various organs based on a single gene mutation. Basket trials can be performed for carcinomas with low tissue specificity, confirming the efficacy of one drug for a single gene mutation in various carcinomas. Conversely, if the tissue specificity of cancer is high, cancer is induced in only one organ based on a single gene mutation. An umbrella trial can be performed for carcinomas with a high tissue specificity. Some drugs are effective for patients with a specific genotype. A companion diagnostic strategy that prescribes a specific drug for patients selected with a specific genotype is also reviewed. Genomic information is used in pharmacometrics to identify the relationship among pharmacokinetics, pharmacodynamics, and biomarkers of disease treatment effects. Utilizing genomic information, sophisticated clinical trials can be designed that will be better suited to the patients of specific genotypes. Genomic information also provides prospects for innovative drug development. Through proper genomic information management, factors relating to drug response and effects can be determined by selecting the appropriate data for analysis and by understanding the structure of the data. Selecting pre-processing and appropriate machine-learning libraries for use as machine-learning input features is also necessary. Professional curation of the output result is also required. Personalized medicine can be realized using a genome-based customized clinical trial design.Entities:
Keywords: basket trial; clinical trial; genomic information; new drug development; umbrella trial
Year: 2022 PMID: 35893795 PMCID: PMC9330622 DOI: 10.3390/pharmaceutics14081539
Source DB: PubMed Journal: Pharmaceutics ISSN: 1999-4923 Impact factor: 6.525
Large-scale cohort cases for the realization of precision medicine by nation.
| Nation | Project Name | Data Size | Link | Ref. |
|---|---|---|---|---|
| Multi-national consortium | 1000 Genomes Project | 4974 people | [ | |
| USA | Precision Medicine Initiative cohort program (All-of-Us) | 1M people (To be completed in 2022) | [ | |
| England | The 100,000 Genomes Project | 5M people (To be completed in 2023) | [ | |
| Iceland | deCODE Genetics | 100K people (Completed) | [ | |
| Finland | FinnGen Research Project | 50K (To be completed) | [ | |
| Korea | Korea Bio-resource Information System | 500 people | [ | |
| Korea | Clinical & Omics Data Archive | 780 people | [ | |
| Netherlands | The Genome of the Netherlands project (GoNL) | 150K people (Completed) | [ | |
| Singapore | Genome Institute of Singapore (GIS) | 1M people (To be completed in 2028) | [ |
Figure 1Processing strategy for genomic and clinical data. Data collected have to be stored, indexed, and cleaned for use at a later stage. Data modeling and curation are shown for the clinical decision system. All processes must be performed under the regulation of the bioethics law.
Figure 2Basket and umbrella trials.
Cases of companion diagnosis.
| Gene/Protein | Anticancer Agent | Indications | Biomarker | Routine Testing | Ref. Papers | Ref. CT |
|---|---|---|---|---|---|---|
| ALK | Crizotinib, ceritinib, alectinib, lolatinib, brigatinib | NSCLC | ALK translocation | FISH, IHC | [ | NCT00932451 |
| AR | Abiraterone, enzalutamide, dalurotamide, apalutamide | Prostate cancer | AR expression | IHC | [ | NCT02485691 |
| BCL-2 | Venetoclax | CML | BCL-2 protein expression, BCL-2 amplification/translocation | IHC (FISH, DNA/RNA sequencing), PCR | [ | NCT03552692 |
| BCR/ABL | Imatinib, dasatinib, nilotinib, bosutinib, ponatinib | CML | BCR/ABL1 fusion | IHC, PCR, DNA sequencing | [ | NCT00070499 |
| BRAF | Dabrafenib+trametinib, vemurafenib+cobimetinib, encorafenib+binimetinib | Melanoma, NSCLC, ATC, HCL | BRAF V600E/K mutations | IHC, PCR, DNA sequencing | [ | NCT01597908 |
| C-KIT, PDGFR | Imatinib | GIST | c-KIT Exon 9 and 11 mutations, PDGFR mutations | IHC, DNA sequencing | [ | NCT00117299 |
| PDGFRB | Imatinib | Myelodysplastic/myeloproliferative syndromes | PDGFRB rearrangement | FISH | [ | NCT00038675 |
| BRCA | Olaparib, talazoparib, rucaparib | Breast cancer, ovarian cancer, prostate cancer | Germline/somatic BRCA 1/2 mutations | DNA sequencing | [ | NCT03286842 |
| CTLA-4 | Ipilimumab | Melanoma | DNA sequencing, PCR | [ | NCT01216696 | |
| ER/PR | Tamoxifen, raloxifene, fulvestrant, toremifine | Breast cancer | ER/PR expression | IHC | [ | NCT00066690 |
| erBB2/HER-2 | Trastuzumab, pertuzumab, ado-trastuzumab, emtansine, neratinib | Breast cancer, gastric cancer | HER-2 protein expression, HER-2 amplification | IHC, FISH | [ | NCT01702558 |
| EGFR | Gefitinib, erlotinib, afatinib, dacomitinib | NSCLC | EGFR exon 19 deletion, exon 21 L858R mutation | DNA sequencing, PCR | [ | NCT01955421 |
| Osimertinib | EGFR T790M mutation | [ | NCT02474355 | |||
| FGFR2/3 | Erdafitinib | Bladder cancer | FGFR3 mutations, FGFR2/3 fusions | DNA sequencing, FISH | [ | NCT05052372 |
| FLT3 | Midostaurin, gilteritinib | AML | FLT3 mutations | DNA sequencing, PCR | [ | NCT04027309 |
| IDH1/2 | Ivosidenib, enasidenib | AML | IDH1/2 mutations | IHC, DNA sequencing | [ | NCT02632708 |
| MET | Crizotinib | NSCLC | MET amplification, MET exon 14 alterations | FISH, DNA/RNA sequencing | [ | NCT00585195 |
| MSI-H or dMMR | Pembrolizumab | MSI-H or dMMR solid tumors | MLH1, MSH2, MSH6, PMS2 protein expression, MSI high | IHC, DNA sequencing, PCR | [ | NCT04082572 |
| Nivolumab and ipilimumab | Colorectal cancer | [ | NCT04008030 | |||
| NTRK | Larotrectinib, entrectinib | Solid tumors with NTRK fusions | NTRK protein expression, NTRK fusion | IHC, FISH, DNA/RNA sequencing | [ | NCT02576431 |
| PI3KCA | Alpelisib | Breast cancer | PI3KCA mutation | DNA sequencing | [ | NCT02437318 |
| PI3KCA (alpha and delta) | Copanlisib | FL | PI3K mutation | DNA sequencing | [ | NCT01660451 |
| PI3K (delta and gamma) | Duvelisib | CLL, SLL | PI3K mutation | DNA sequencing | [ | NCT01476657 |
| RAS | Cetuximab, panitumumab | CRC | KRAS/NRAS wildtype | DNA sequencing | [ | NCT04117945 |
| RET | LOXO-292 | NSCLC, MTC | RET fusion, RET mutation | FISH, DNA/RNA sequencing | [ | NCT03157128 |
| ROS1 | Crizotinib, entrectinib | NSCLC | ROS translocation | FISH, DNA/RNA sequencing | [ | NCT04603807 |
FISH: Fluorescence in situ hybridization, ISC: Immunohistochemistry, NSCLC: non-small cell lung cancer, CML: Chronic myeloid leukemia, ATC: anaplastic thyroid cancer, HCL: hairy cell leukemia, GIST: Gastrointestinal stromal tumor, AML: Acute myeloid leukemia, MSI-H: Microsatellite instability high, dMMR: DNA mismatch repair deficiency, CRC: Colorectal cancer, MTC: medullary thyroid cancer, FL: Follicular lymphoma, CLL: Chronic lymphocytic leukemia, SLL: small lymphocytic lymphoma.
Figure 3Examples of basket trials in EGFR.
Figure 4A comprehensive model of genomic information management with clinical data. Two omics data, gene expression and DNA methylation patterns could be changed by aging. The genomic data and clinical data of an individual are continuously collected over time. We aim to develop a model that can predict disease prediction, provide appropriate lifestyle habits, or present evidence that can be used in clinical practice by discovering genomic data that predicts changes in health status based on the collected data and applying machine learning to each data. Strategies for presenting insights based on patient-derived genomic information. Hospitals track and accumulate clinical information for chronic disease patients. Clinical information explains the maintenance of health, deterioration of the health state, and recovery of health over time. Integrate clinical and genomic information to find factors related to maintaining healthy states. The optimal combination is presented through machine learning, disease detection, lifestyle suggestion, and clinical decision basis.
Cases of extracting new insights through public omics data.
| Case | Query | Source | Output | Accessibility | Ref. |
|---|---|---|---|---|---|
| DBATE | Gene symbols | 13 large RNA-seq from human healthy and disease tissues from NCBI GEO | Expression values that can be visualized in several ways | [ | |
| MENT | Gene symbols or conditions of genomic data | NCBI GEO and TCGA | Patterns and gene list of DNA methylation, gene expression and their correlation in diverse cancers | [ | |
| GEM-TREND | Gene symbols | GEO, ArrayExpress, researchers’ websites | GEO series and platform ID, series title, similarity score, and | [ | |
| GeneXX | Gene symbols | NCBI GEO, transcriptome data | Stratified by exercise type, training status, sex, and time point postexercise | [ | |
| GeneATLAS | GWAS catalog no. | UK Biobank | A large database of associations between hundreds of traits and millions of variants using the UK Biobank cohort | [ | |
| GliomaDB | Gene symbols | NCBI GEO, TCGA, CGGA, MSK-IMPACT, US FDA, PharmGKB of Genomic, transcriptomic, epigenomic, clinical information | Kaplan-Meier plot. The interactive heatmap visualization of the multi-omics data | [ | |
| Metamex | Gene symbols | Oligo package, limma package, DESeq2 package, NCBI GEO. | Skeletal muscle transcriptional responses to different modes of exercise and an online interface to readily interrogate the database | [ | |
| Oncopression | Gene symbols | NCBI GEO, ArrayExpress, ICGC, ExpressionAtlas, cBioPortal, ExAc Browser, oncomine (Rhodes) | Sample statistics of oncopression, Validity of dataset integration, Use of oncopression in cancer research | [ | |
| RefEx | Gene symbols, disease names | ESTs, Affymetrix GeneChip, CAGE, RNA-Seq, NCBI gene ID | Integration of publicly available gene expression data, visualize with BodyParts3D, extraction of genes with tissue-specific expression patterns, gene expression visualization of the FANTOM5 CAGE data | [ | |
| ReGEO | Gene symbols | GEO, NCBI, Search by keyword, GSE Accession, Pubmed ID, Experiment Type, Organism, Disease, Timepoints | Identify and categorize data for their integrative data analysis | [ |
GEO: Gene Expression Omnibus. GEO series and platform ID are start as “GSE” and “GPL”, respectively.