| Literature DB >> 29423275 |
Sylvie Delhalle1, Sebastian F N Bode1,2, Rudi Balling3, Markus Ollert1,4, Feng Q He1.
Abstract
Big data generation and computational processing will enable medicine to evolve from a "one-size-fits-all" approach to precise patient stratification and treatment. Significant achievements using "Omics" data have been made especially in personalized oncology. However, immune cells relative to tumor cells show a much higher degree of complexity in heterogeneity, dynamics, memory-capability, plasticity and "social" interactions. There is still a long way ahead on translating our capability to identify potentially targetable personalized biomarkers into effective personalized therapy in immune-centralized diseases. Here, we discuss the recent advances and successful applications in "Omics" data utilization and network analysis on patients' samples of clinical trials and studies, as well as the major challenges and strategies towards personalized stratification and treatment for infectious or non-communicable inflammatory diseases such as autoimmune diseases or allergies. We provide a roadmap and highlight experimental, clinical, computational analysis, data management, ethical and regulatory issues to accelerate the implementation of personalized immunology.Entities:
Year: 2018 PMID: 29423275 PMCID: PMC5802799 DOI: 10.1038/s41540-017-0045-9
Source DB: PubMed Journal: NPJ Syst Biol Appl ISSN: 2056-7189
Fig. 1A roadmap proposed towards personalized immunology. There exist both horizontal and vertical roadmaps towards personalized immunology. Vertically, to translate sample stratification to clinical therapies, we need to utilize the state-of-the-art “Omics” analysis and network integration approaches to stratify patients into subgroups and then implement personalized therapeutic approaches to treat individual patients, which needs to overcome various types of barriers at different steps. Horizontally, we might need to go through at least 7 steps to enable personalized immunotherapies, 1) classic symptom-based approach, 2) deep phenotyping approach, 3) multi-layer “Omics”-based profiling, 4) cell type-specific “Omics”, 5) state-specific “Omics”, 6) single-cell (sc) “Omics” and dynamic response analysis of immune cells, 7) integrated network analysis. FACS, fluorescence activated cell sorting; TCR/BCR, T cell receptor/B-cell receptor; DEG, differential expression gene; PEEP, personalized expression perturbation profile; SSN, sample-specific network; SVM, support vector machine; KNN, K-nearest neighbors; under the first layer (the so-called stratification layer), different colors of patients indicate individual patients with different cellular and/or molecular profiles while brackets represent patient subgroups; under the second layer (the so-called technique layers), different small circles with distinct colors indicate different immune cells while big circles represent patient (sub)groups; under the technique layers, the snapshot of microarray representing either microarray-based or RNA-seq-based transcriptome analysis; under the third layer (the so-called therapeutic layer), the syringes with different colors or tonalities indicate different therapeutic approaches; P1,..., Pn at step 7 designate different patients; G1, G2, G3, G4 represent different genes, the arrows between them representing regulatory relationships. Three images in the second layer of step 1 are used with permissions from Fotolia.com
Selected examples of clinical trials from ClinicalTrials.gov related to personalized/precision immunology
| Clinical trial number | Disease studied | Type of samples analyzed | What is measured/planned | Status | References or comments |
|---|---|---|---|---|---|
| NCT02437084 | Diabetes type 2 | Blood | “Integrated omics profile” a, glucose tolerance (OGTT), LDL, triglycerides | Active, recruiting | |
| NCT02654704 | Pneumococcal vaccination | Blood | RNA-expression, protein profiles and small molecule profiles on immune cells as these change over time prior to and following immune activation by the vaccine -- >integrated omics profile | Active, recruiting | |
| NCT02183818 | COPD | Not specified, probably blood | Omic data sets including genetic, epigenetic (methylation), gene expression, microRNA and metabolomic levels | Active, recruiting | |
| NCT02931955 | Insect venom and pollen allergy | Blood, stool | Time-series transcriptome of various sorted CD4+ subsets, serum cytokines, PBMC immune cells deep phenotyping | Active, recruiting | |
| NCT00897715 | Inflammation in Chronic Kidney Disease and Cardiovascular Disease | Not specified, probably blood | Polymorphism/haplotypes, genotype combinations and gene-environmental interactions that can affect inflammation | Completed | No publication found |
| NCT01423461 | Childhood wheeze and asthma | Not specified, probably blood | “Genetic data” | Completed | No publication found |
| NCT01681732 | Pediatric asthma | Saliva, probably blood, lung function tests | “Genetic tests”, lung function tests | Completed | No publication found |
| NCT01750411 | Asthma | Blood, lung function testing | Genetic influences on disease severity and the use of statistical modeling techniques to better understand disease phenotypes | Active, not recruiting | |
| NCT02721134 | Sepsis | Blood | “New biomarkers” (somehow based on a LPS assay—not clear from the description) | Recruiting | |
| NCT03109288 | Multiple sclerosis | Blood, tears, spinal fluid | “Biomarkers” | Recruiting | |
| NCT00942214 | Multiple sclerosis | Blood | HLA-alleles, “biomarkers” not further specified | Completed | Partly in ref. [ |
| NCT01060410 | Systemic lupus erythematosus | Blood | Genetic polymorphisms of drug metabolizing enzymes and pharmacokinetics of cyclophosphamide | Active, recruiting | |
| NCT03033095 | Spondyloarthritis | Blood | Calcium-binding protein complex S100A8/A9, prealbumin, haptoglobin (Hapto), protéine C-réactive (CRP), α1 anti-trypsin, apolipoprotéinA1 (ApoA1), platelet factor 4 (PF4), S100A12 protein | Active, recruiting | |
| NCT00251017 | Patients receiving vancomycin | Blood | Single nucleotide polymorphism (SNP) of OAT1, OAT3, and OCT2, plasma creatinine and vancomycin concentration | Completed | No publication found |
| NCT03015610 | Pediatric gastroesophageal reflux and asthma | Blood, lung function testing | Effect of CYP2C19 and ABCB1 genes on pharmacokinetics of lansoprazole, questionnaires, lung function tests | Not yet open | |
| NCT00895271 | Immunodeficiency and immunodysregulation | Skin samples | Skin samples to be transformed into pluripotent stem cells for gene-therapy approaches | Active, recruiting | |
| NCT02508584 | Chronic mycoplasma hominis septic arthritis | Personalized M. Hominis anti IgG | Active, recruiting | ||
| NCT01699893 | Immune System Response in general | Blood, nasal swab, stool, skin biopsy | Not specified | Completed | See ref. [ |
| NCT02690285 | Healthy volunteers, later targeted to patients with Pyruvate Dehydrogenase Complex Deficiency | Blood | Glutathione transferase zeta 1 (GSTZ1) haplotype status | Completed | |
| NCT02929745 | Psoriasis | Blood, skin biopsies | Comparison of HLA-Cw6 positive/negative psoriasis skin lesions at the single cell level | Active, recruiting |
Search results obtained from Clinicaltrials.gov using different key words until 3 Aug 2017: “personalized” –>1404 studies; “precision” –>738 results; (“precision” OR “personalized”) AND “immunology” –>157 results; (“precision” OR “personalized”) and “allergy” –>162 results; (“precision” OR “personalized”) AND (“Immunology” OR “Inflammation”) –>201 results; (“precision” OR “personalized”) AND “HIV” –>76 results; “systems medicine” –>14 results; “systems biology” –>51 results
COPD chronic obstructive pulmonary disease, LDL low density lipoprotein, LPS lipopolysaccharides
aInformation within quotation marks are directly cited from clinicaltrials.org
Summary of key challenges and the potential solutions towards personalized immunology
| Items | Key challenges | Potential solutions |
|---|---|---|
| 1 | Genome-scale or finer-scale analysis on “averaged” data of heterogeneous cell types from body fluids (e.g., blood or PBMC) or biopsies | Cell-type-specific and state-specific “Omics” analysis on sorted immune cells |
| 2 | “Averaged” results of heterogeneous individual immune cells | Single-cell “Omics” |
| 3 | Lack of disease progression and clinical-outcome predictive, prognostic and early-warning tipping-point biomarkers | Dense time-series “Omics” measurement and analysis along longitudinal studies |
| 4 | Lack of comprehensive profiling of various types of molecules | Multi-layer “Omics” and integrated experimental and computational analysis |
| 5 | Focus on our own human cells | Also with skin, lung, gut, and reproductive tract microbiome analysis |
| 6 | Lack of large effects of identified SNVs on the diseases or symptoms of interests | Selection of patients or subjects with more defined inclusion or exclusion criteria, e.g., removing those with comorbidity; combinatorial effects of higher number of SNVs with more powerful computers |
| 7 | Availability of research-focused genetic analysis tools | Clinics-orientated standardized genetic analysis tools with higher accuracy, stability and computational power |
| 8 | Only a small fraction of patients with up- or down-regulated biomarkers identified by group-wised approaches | Personalized expression perturbation profiles of each individual |
| 9 | Biomedical interpretation for biomedical researchers or clinicians using machine-learning based classification approaches not provided yet | Personalized expression perturbation profiles of each individual |
| 10 | Unreliability and irreproducibility in identified single or a panel of molecular biomarkers | Standardization in clinical sampling procedures, sample measurement, data management and analysis; Absolute quantification of biomarkers of interests using a large-number of “Omics” data sets as a reliable common reference; Personalized sample-specific network (SSN) |
| 11 | Relevant immune cells or molecules of interests often show nonlinear dynamic characteristics | Time-series space-state analysis |
| 12 | Instability of transcripts and metabolites | Proteomics-based analysis |
| 13 | Lack of information of immune cells about environmental exposome | Epigenomics-based analysis |
| 14 | Massive unstructured and unstandardized clinical data | Reliable and efficient text-mining tools |
| 15 | Lack of integration of prior knowledge on disease mechanisms with potential biomarkers | Establishment of molecular maps for different diseases. |
| 16 | Fragmented, unstandardized, unsecured, undigitized, unstructured, uncentralized, and ever-increasing big data | Dedicated big-data management platforms and shared national and international infrastructure with long-lasting update. |
| 17 | Classic informed consents (ICs) with defined duration and research purposes | Broad or dynamic ICs |
| 18 | Threat of patient data privacy due to wide usage of social-media or wearable-instruments derived clinical or behavior information | New anonymization and pseudonymisation approaches of patients’ identification |
| 19 | Group-wised approaches to assess efficacy and safety of candidate drugs | Separate evaluation of effects on individuals or subgroups of patients |
| 20 | High and long-lasting financial cost | To adjust and extend the current funding period framework for most agencies; Closely working with health insurance providers to differentially treat patient subgroups |
| 21 | One-cut pharmaceutical production pipelines | Multi-“Omics”-guided customized production pipelines |
Literature citation is directly inserted through the main text due to a large-number of references.
Fig. 2Longitudinal studies and dynamic measurement are critical for discovering various types of biomarkers. a Longitudinal follow-up of individual patients with multilayer “Omics” analysis is essential for identifying different types of biomarkers. The check marker at the given time point indicates the necessary “Omics” measurement and clinical assessment for revealing the given type of biomarker while the cross symbol indicates an unnecessary involvement at the given time point for the given type of biomarker. b Time-series “Omics” analysis of the cultured isolated immune cells from the first visit (T0 at panel a) following certain stimulation or stresses will also be able to help extract various types of biomarkers. c Various types of dynamic patterns of different pathways or modules or subnetworks of the given relevant type of immune cells isolated from PBMC or other tissues of individual patients might be valuable for patient subgroup stratification. Subnetwork activities at the given time can be defined either by the expression levels of the co-expressed genes, or by the expression levels of the effector genes (such as cytokines) or any other readouts which could define the activities or outputs of the given pathway or subnetwork or module