Colorectal Cancer Clinical Trial
Official title:
Exploratory Analysis on the Impact of Morbidities on Colorectal Cancer Screening Uptake
The primary aim of this project is to examine the association between having a long-term
condition (morbidity) and screening uptake for colorectal cancer. Whilst this project will
consider all morbidity and co-morbidities, there will be a particular focus on common mental
health disorders, such as depression and anxiety.
The secondary aim of this project is to examine other factors that may influence uptake
rate. Information on a wide array of potential factors is available for this project. These
include demographics (age, gender, ethnicity), socio-economic status (deprivation, education
status) and lifestyle (smoking status, drinking patterns, degree of exercise). In addition,
any potential moderating effect of these factors on the association between morbidity and
screening uptake shall be explored.
In summary, the following shall be explored:
- Uptake rates by type of mental health disorder.
- Uptake rates by chronic physical health problems.
- Associations between uptake, morbidity (both physical and mental) and broader health
determinants such as demographics, socio-economic status and lifestyle.
Linkage of datasets and ethical issues.
The South Yorkshire Cohort (SYC) data (including patient identifiers) are held by the
Clinical Trials Research Unit (CTRU) at the University of Sheffield, whilst Bowel Cancer
Screening Programme (BCSP) data are held by the NHS Cancer Screening Programmes (part of
Public Health England).
Linkage will be based on the subset of respondents to the SYC who have given their consent
for the SYC researchers to look at their NHS health records, and are eligible to be invited
for colorectal cancer (CRC) screening. The proposed method for linkage will be as follows:
- For those respondents who have given this consent, the CTRU shall send their NHS number
and their SYC study ID to the BCSP.
- Using the NHS number, the BCSP shall extract data on if the individual was invited for
screening, and if so whether or not the individual accepted screening.
- The BCSP shall then send the screening data along with the SYC study ID to the CTRU.
NHS number shall not be included in the data that is sent from the BCSP (in other words
it will be pseudo-anonymised).
- The CTRU shall use the pseudo-ID to link the screening programme data to the SYC data.
A pseudo-anonymised dataset shall then be released to the research team.
In this way, the only patient-identifiable data that the BCSP would receive is data that
they already hold (NHS number), whilst the CTRU would not receive any additional
patient-identifiable data.
It should also be stressed that the research team undertaking this project would not have
access to patient-identifiable data at any stage of the project.
Data used.
The following data shall be used within this project:
• Exposure variables. The exposure variables are the presence of long-standing conditions.
These are collected within the SYC as self-reported long-standing conditions. Twelve named
conditions are recorded, along with an "other" condition, which includes free-text to allow
the respondent to state the condition. These conditions (and their prevalence amongst a
preliminary sample of people aged 60 to 74 in the SYC) are: Depression (8%), Anxiety (10%),
Fatigue (19%), Pain (28%), Insomnia (8%), Diabetes (10%), Breathing problems (13%), High
blood pressure (31%), Heart disease (10%), Osteoarthritis (16%), Stroke (3%), Cancer (5%)
and Other (29%).
All of the long-standing conditions shall be considered, with the exception of cancer (as
this will include CRC, and patients with this are not eligible for screening) and free-text
descriptions (these shall be analysed as "other").
- Outcome variable. The outcome variable will be if the individual attended CRC
screening. This will be linked to SYC data using data supplied by the National Bowel
Cancer Screening Programme. It should be noted that CRC screening relates to the first
time an individual is screened (prevalent screening). The main analysis will look at if
an individual has had a CRC screen (irrespective of number of invitations to screening
that were sent). Depending on the available evidence, a secondary analysis would
consider the outcome variable of 'individual accepted CRC screening after refusing the
initial invitation for CRC screening.'
- Confounding variables. The following potentially-confounding variables shall be
assessed: Age, gender, ethnicity, highest level of education, levels of physical
exercise, smoking status, alcohol consumption, and IMD deprivation score.
- Additional descriptive variables. The following variables will not be used within the
statistical models, but shall be included when performing a descriptive comparison of
individuals who do attend screening with those who do not attend screening:
self-reported EQ-5D summary score, self-reported healthcare use in the last 3 months
(this includes 22 named categories, it is anticipated that due to small numbers some of
these will need to be grouped. Possible groupings to consider are: Accident and
emergency (A&E), Hospital use (excluding A&E), Health-carer: GP, Health-carer: Nurse,
Other health-carers, Other carers, Alternative therapists.
Statistical analysis.
The statistical analysis shall include the following sections:
• Initial exploratory analysis. This initial analysis shall provide an overview of the
available data, and will highlight any issues that may need to be addressed within the
statistical modelling.
A descriptive analysis shall compare the characteristics of people who attend CRC screening
with those who do not attend. This comparison will include the exposure variables,
confounding variables and additional descriptive variables (as detailed in the previous
section). Comparisons will be tested for statistical significance, with the caveat that as
no specific differences were hypothesised a priori, resulting p-values should be interpreted
with caution. T-tests will be used to compare continuous variables, Fisher's exact test will
be used to compare binary variables, and the Kruskal-Wallis test will be used to compare
ordinal variables. Any p-values less than 5% will be taken to indicate a statistically
significant association.
In addition to the descriptive analysis, the functional form of the association between any
continuous variables and the outcome shall be visually assessed using smoothing methods. If
a non-linear functional form is indicated then the use of non-linear functions (fractional
polynomials, natural splines) shall be considered.
- Handling missing data. The amount of missing data shall determine the strategy employed
(Harrell, 2001). If the total proportion of people with any missing data is less than
5% then single imputation of missing values shall be carried out. Otherwise, multiple
imputation of missing values shall be carried out.
- Statistical modelling. Screening uptake rates for CRC shall be analysed using logistic
regression, with patient demographics, socioeconomic status, lifestyle factors and
morbidities as the potentially explanatory variables.
The primary interest is which morbidities affect uptake rate, with particular interest in
mental morbidities (of which depression and anxiety are measured in the SYC). Because of
this, only interactions with these two mental morbidities shall be considered. To examine
the association between the mental morbidities and uptake, and to see how the other
variables influence this association, a series of models shall be presented:
- Model 1 (univariate-model): this shall include only the long-standing conditions
(exposure variables) as the independent variables.
- Model 2 (demographics-adjusted model): this shall include the independent variables
from Model 1, along with the demographic variables (age, gender and ethnicity).
- Model 3 (full model): this shall include all the variables considered in this study.
Interactions shall not be considered.
- Model 4 (exploratory model): this shall apply subset-selection to Model 3
(backwards-stepwise, with a probability-to-remove of 0.05). Interactions shall be
considered after applying subset-selection.
The purpose of displaying a series of models will be to show the un-adjusted association
between morbidities and screening uptake, and the highlight the degree to which these
associations are mediated by patient characteristics. A distinction is made between
'intrinsic' characteristics (age, gender and ethnicity), which are (generally) beyond a
person's control to change, and the remaining characteristics, over-which a person has more
control
Power calculations.
Power analyses were conducted using G*Power 3.1.9. The required sample size to detect a
significant effect of a pre-specified variable was calculated. For this analyses an alpha
level of 5% and a two-tailed test were used. There were a number of additional factors that
needed to be estimated or chosen:
- Required power: values of 95% and 80% were used.
- Odds ratio: values between 1.2 and 3 were tested.
- Probability of uptake amongst those without any morbidity: the overall uptake of 47%
observed between 2008 and 2011 of the BCSP was used.
- Degree of correlation amongst the potentially explanatory variables: values of 20% and
40% were tested (this is denoted by 'R2' in the table below).
- Prevalence of the pre-specified variable: a value of 8% was used, corresponding to the
prevalence of depression in a preliminary analysis of the SYC data. In this analysis,
74% of the sample had a morbidity, with an average of 1.8 long-term conditions per
person.
Table 1: Sample size required as a function of power, correlation, and odds ratio.
Power = 80% Power = 95% Odds Ratio R2 = 0.2 R2 = 0.4 R2 = 0.2 R2 = 0.4 1.2 16,066 21,422
26,605 35,473 1.3 7,780 10,373 12,876 17,168 1.4 4,751 6,335 7,857 10,476 1.5 3,292 4,389
5,437 7,249 1.6 2,466 3,289 4,069 5,425 1.8 1,603 2,137 2,637 3,516 2.0 1,174 1,566 1,925
2,567 2.2 926 1,234 1,513 2,017 2.4 767 1,022 1,248 1,665 2.6 658 877 1,067 1,422 2.8 579
772 935 1,247 3.0 519 693 837 1,116
The sample size available is expected to be approximately 7,500 indicating that any odds
ratios of 1.4 or greater will be detected with 80% power, whilst any odds ratios of 1.5 or
greater will be detected with 95% power.
An example of a change in uptake rates relating to an odds ratio of 1.5 would be a decrease
in uptake from 60% to 57%. Further examples are presented in Table 2.
Table 2: Decreases in uptake rate corresponding to an odds ratio of 1.5 Uptake rate in group
1: 90% 80% 70% 60% Uptake rate in group 2: 81% 72% 64% 57%
An alternative method for estimating samples sizes was also tested (Campbell, Julious, and
Altman 1996). This uses published tables which estimate the sample size (per group) required
to identify a pre-specified difference in two proportions at at a 5% significance level with
80% power. The group sizes are then adjusted to take into account any differences in group
size. For example, if the group with depression represents 8% of the total population, then
to detect a difference in uptake of 65% amongst people without depression and 60% amongst
people with depression, an overall sample size of 425 is required, of which 34 would need to
have depression and 391 would not have depression. The overall sample size required for a
range of differences in uptake rates are presented in Table 3 (the uptake rates are all
multiples of 5% as these values are used in the published tables).
Table 3: Sample sizes required to detect pre-specified differences in uptake. Uptake in
group A Uptake in group B Total sample size 60% 55% 1 188 65% 60% 425 70% 65% 213 75% 70%
138
* Assuming that the comparison is between people with depression (prevalence 8%,
corresponding to group B) and without depression.
;
Observational Model: Case Control, Time Perspective: Cross-Sectional
| Status | Clinical Trial | Phase | |
|---|---|---|---|
| Recruiting |
NCT05400122 -
Natural Killer (NK) Cells in Combination With Interleukin-2 (IL-2) and Transforming Growth Factor Beta (TGFbeta) Receptor I Inhibitor Vactosertib in Cancer
|
Phase 1 | |
| Active, not recruiting |
NCT05551052 -
CRC Detection Reliable Assessment With Blood
|
||
| Completed |
NCT00098787 -
Bevacizumab and Oxaliplatin Combined With Irinotecan or Leucovorin and Fluorouracil in Treating Patients With Metastatic or Recurrent Colorectal Cancer
|
Phase 2 | |
| Recruiting |
NCT06037954 -
A Study of Mental Health Care in People With Cancer
|
N/A | |
| Recruiting |
NCT05425940 -
Study of XL092 + Atezolizumab vs Regorafenib in Subjects With Metastatic Colorectal Cancer
|
Phase 3 | |
| Suspended |
NCT04595604 -
Long Term Effect of Trimodal Prehabilitation Compared to ERAS in Colorectal Cancer Surgery.
|
N/A | |
| Completed |
NCT03414125 -
Effect of Mailed Invites of Choice of Colonoscopy or FIT vs. Mailed FIT Alone on Colorectal Cancer Screening
|
N/A | |
| Completed |
NCT02963831 -
A Study to Investigate ONCOS-102 in Combination With Durvalumab in Subjects With Advanced Peritoneal Malignancies
|
Phase 1/Phase 2 | |
| Recruiting |
NCT05489211 -
Study of Dato-Dxd as Monotherapy and in Combination With Anti-cancer Agents in Patients With Advanced Solid Tumours (TROPION-PanTumor03)
|
Phase 2 | |
| Terminated |
NCT01847599 -
Educational Intervention to Adherence of Patients Treated by Capecitabine +/- Lapatinib
|
N/A | |
| Completed |
NCT05799976 -
Text Message-Based Nudges Prior to Primary Care Visits to Increase Care Gap Closure
|
N/A | |
| Recruiting |
NCT03874026 -
Study of Folfiri/Cetuximab in FcGammaRIIIa V/V Stage IV Colorectal Cancer Patients
|
Phase 2 | |
| Active, not recruiting |
NCT03170960 -
Study of Cabozantinib in Combination With Atezolizumab to Subjects With Locally Advanced or Metastatic Solid Tumors
|
Phase 1/Phase 2 | |
| Completed |
NCT03167125 -
Participatory Research to Advance Colon Cancer Prevention
|
N/A | |
| Completed |
NCT03181334 -
The C-SPAN Coalition: Colorectal Cancer Screening and Patient Navigation
|
N/A | |
| Recruiting |
NCT04258137 -
Circulating DNA to Improve Outcome of Oncology PatiEnt. A Randomized Study
|
N/A | |
| Recruiting |
NCT05568420 -
A Study of the Possible Effects of Medication on Young Onset Colorectal Cancer (YOCRC)
|
||
| Recruiting |
NCT02972541 -
Neoadjuvant Chemotherapy Verse Surgery Alone After Stent Placement for Obstructive Colonic Cancer
|
N/A | |
| Completed |
NCT02876224 -
Study of Cobimetinib in Combination With Atezolizumab and Bevacizumab in Participants With Gastrointestinal and Other Tumors
|
Phase 1 | |
| Completed |
NCT01943500 -
Collection of Blood Specimens for Circulating Tumor Cell Analysis
|
N/A |