| Literature DB >> 31194784 |
Guilherme S Ferreira1, Désirée H Veening-Griffioen1, Wouter P C Boon2, Ellen H M Moors2, Christine C Gispen-de Wied3, Huub Schellekens1, Peter J K van Meer1,3.
Abstract
INTRODUCTION: Poor translation of efficacy data derived from animal models can lead to clinical trials unlikely to benefit patients-or even put them at risk-and is a potential contributor to costly and unnecessary attrition in drug development.Entities:
Mesh:
Year: 2019 PMID: 31194784 PMCID: PMC6563989 DOI: 10.1371/journal.pone.0218014
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Literature search process.
Identification, screening and inclusion of articles for the identification of validation parameters in the literature.
The eight domains identified and their frequency in the included articles.
| Domain | Description | Frequency |
|---|---|---|
| Epidemiology | related to age and sex | 12 |
| Symptomatology and Natural History (SNH) | related to symptoms and natural history of disease | 62 |
| Genetics | related to genes, genetic alterations and expression | 19 |
| Biochemistry | related to biomarkers | 43 |
| Aetiology | related to the aetiology | 26 |
| Histology | related to the histopathological features | 37 |
| Pharmacological | related to the effect of effective and ineffective drugs | 39 |
| Endpoints | related to the endpoints and the methods to assess thereof chosen for the pharmacological studies | 9 |
The Framework to Identify Models of Disease (FIMD).
Questions per validation parameter, and weight of each question and domain according to the same weighting system, in which the total of 100 points is divided equally by the eight domains, and then equally by each question within a domain.
| Weight | |
|---|---|
| 1. EPIDEMIOLOGICAL VALIDATION | 12,5 |
| 1.1 Is the model able to simulate the disease in the relevant sexes? | 6,25 |
| 1.2 Is the model able to simulate the disease in the relevant age groups (e.g. juvenile, adult or ageing)? | 6,25 |
| 2. SYMPTOMATOLOGY AND NATURAL HISTORY VALIDATION | 12,5 |
| 2.1 Is the model able to replicate the symptoms and co-morbidities commonly present in this disease? If so, which ones? | 2,5 |
| 2.2 Is the natural history of the disease similar to human’s regarding: | 2,5 |
| 2.2.2 Disease progression | 2,5 |
| 2.2.3 Duration of symptoms | 2,5 |
| 2.2.4 Severity | 2,5 |
| 3. GENETIC VALIDATION | 12,5 |
| 3.1 Does this species also have orthologous genes and/or proteins involved in the human disease? | 4,17 |
| 3.2 If so, are the relevant genetic mutations or alterations also present in the orthologous genes/proteins? | 4,17 |
| 3.3 If so, is the expression of such orthologous genes and/or proteins similar to the human condition? | 4,16 |
| 4. BIOCHEMICAL VALIDATION | 12,5 |
| 4.1 If there are known pharmacodynamic (PD) biomarkers related to the pathophysiology of the disease, are they also present in the model? | 3,125 |
| 4.2 Do these PD biomarkers behave similarly to humans’? | 3,125 |
| 4.3 If there are known prognostic biomarkers related to the pathophysiology of the disease, are they also present in the model? | 3,125 |
| 4.4 Do these prognostic biomarkers behave similarly to humans’? | 3,125 |
| 5. AETIOLOGICAL VALIDATION | 12,5 |
| 5.1 Is the aetiology of the disease similar to humans’? | 12,5 |
| 6. HISTOLOGICAL VALIDATION | 12,5 |
| 6.1 Do the histopathological structures in relevant tissues resemble the ones found in humans? | 12,5 |
| 7. PHARMACOLOGICAL VALIDATION | 12,5 |
| 7.1 Are effective drugs in humans also effective in this model? | 4,17 |
| 7.2 Are ineffective drugs in humans also ineffective in this model? | 4,17 |
| 7.3 Have drugs with different mechanisms of action and acting on different pathways been tested in this model? If so, which? | 4,16 |
| 8. ENDPOINT VALIDATION | 12,5 |
| 8.1 Are the endpoints used in preclinical studies the same or translatable to the clinical endpoints? | 6,25 |
| 8.2 Are the methods used to assess preclinical endpoints comparable to the ones used to assess related clinical endpoints? | 6,25 |
Fig 2Hypothetical radar plot.
Radar plot with hypothetical scores per parameter per model. The closer a parameter is to the edge, the better the model simulates that aspect of the human disease. SNH–Symptomatology and Natural History.
Different levels of validation according to the percentage of definite answers to the questionnaire.
| (%) Definite Answers | Validation Level |
|---|---|
| 0–40 | Insufficiently validated |
| 41–60 | Slightly validated |
| 61–80 | Moderately validated |
| 81–100 | Highly validated |
Fig 3DMD models results.
Radar plot with the scores per parameter per model of DMD. The closer a parameter is to the edge, the better the model simulates that aspect of the human disease.
Percentage of studies complying with the reporting quality parameters adapted from the ARRIVE guidelines per parameter per model.
| Parameter | Mdx Mouse | GRMD dog | Total | Parameter | Mdx Mouse | GRMD dog | Total |
|---|---|---|---|---|---|---|---|
| Y (%) | Y (%) | ||||||
| Type of Facility | 6.3 | 0.0 | 5.7 | Environmental Enrichment | 0.0 | 0.0 | 0.0 |
| Type of Cage or Housing | 12.5 | 0.0 | 11.4 | Any Blinding | 43.8 | 33.3 | 42.9 |
| Bedding Material | 0.0 | 0.0 | 0.0 | Any Randomisation | 34.4 | 0.0 | 31.4 |
| Number of Cage Companions | 12.5 | 0.0 | 11.4 | Sample Size | 84.4 | 100.0 | 85.7 |
| Breeding Programme | 53.1 | 100.0 | 57.1 | Sample Size Calculation | 6.3 | 33.3 | 8.6 |
| Light/Dark Cycle | 25.0 | 0.0 | 22.9 | Acclimatisation | 18.8 | 0.0 | 17.1 |
| Temperature and Humidity | 3.1 | 0.0 | 2.9 | Sex Disclosed | 46.9 | 33.3 | 45.7 |
| Quality of the Water (fish) | - | - | - | Male/Female/Both | 53.3/20.0/26.7 | 0/0/100 | 50.0/18.8/31.3 |
| Type of Food | 6.3 | 0.0 | 5.7 | Background Control | - | - | - |
| Access to Food and Water | 34.4 | 0.0 | 31.4 | Background Model | - | - | - |
Percentage of studies with low (Yes) or unclear (Unclear) risk of bias per parameter per model.
| Risk of Bias | Mdx Mouse | GRMD dog | Total |
|---|---|---|---|
| Yes/Unclear (%) | |||
| Allocation Concealment | 0/100 | 0/100 | 0/100 |
| Blinded Outcome Assessment | 3.1/96.8 | 0/100 | 2.9/97.1 |
| Blinded Operations | 0/100 | 0/100 | 0/100 |
| Random Cage Allocation | 0/100 | 0/100 | 0/100 |
| Random Outcome Assessment | 0/100 | 0/100 | 0/100 |
| Sequence Generation | 0/96.8 | 0/100 | 0/97.1 |
| Baseline Characteristics | 3.1/96.8 | 0/100 | 2.9/97.1 |
| Incomplete Outcome Data | 18.8/67.7 | 0/100 | 17.1/71.4 |
| Selective Outcome Reporting | 96.9/3.2 | 100/0 | 97.1/2.9 |
| Other | 71.9/6.5 | 33.3/0.0 | 68.6/5.7 |