| Literature DB >> 26391356 |
Gillles Nuemi1,2, Hervé Devilliers1,2, Karine Le Malicot2, Rosine Guimbaud3, Côme Lepage1,2, Catherine Quantin4,5,6.
Abstract
OBJECTIVE: Quality of life data in cancerology are often difficult to summarize due to missing data and difficulty to analyze the pattern of evolution in different groups of patients. The aim of this work was to apply a new methodology to construct Quality of Life (QoL) change patterns within patients included in a clinical trial comparing to regimen of treatment in locally advanced eosogastric cancer.Entities:
Mesh:
Year: 2015 PMID: 26391356 PMCID: PMC4578418 DOI: 10.1186/s12955-015-0342-1
Source DB: PubMed Journal: Health Qual Life Outcomes ISSN: 1477-7525 Impact factor: 3.186
Characteristics of patients included in the study
| Variables | ECXa/FOLFIRI arm | FOLFIRI/ECX arm |
|---|---|---|
|
|
| |
| Gender | ||
| Men n (%) | 154 (74) | 155 (75) |
| Performance status at D0 | ||
| =0-1b n (%) | 175(83.7) | 178(86.0) |
| =2 n (%) | 34(16.3) | 29(14.0) |
| Type of tumor | ||
| Diffuse n (%) | 46(22.0) | 51(24.6) |
| Age (years) | ||
| mdc ± inq | 61 ± 16 | 61 ± 16 |
| Follow-up (months) | ||
| md ± inq | 9 ± 12 | 9 ± 10 |
| SAEd n(%) | ||
| After 7 evaluation time points | 122 (58) | 105 (51) |
| TTFe (weeks) | ||
| md ± inq | 17 ± 20 | 22 ± 25 |
| Deaths n(%) | ||
| Globalf | 175 (84) | 180 (87) |
| After 7 evaluation time points | 116 (56) | 113 (55) |
ECX: Epirubicin-Cisplatin-Capecitabine
Performance status
0 = Fully active, able to carry on all pre-disease performance / 1 = Restricted in physically strenuous activity but ambulatory and able to carry out work of a light or sedentary nature
2 = Ambulatory and capable of all selfcare but unable to carry out any work activities. Up and about more than 50 % of waking hours
median ± inter-quartile range
Serious adverse events
Time to therapeutic failure of the first-line treatment
Proportion of deaths whatever the therapeutic line
Fig. 1Distribution of the frequencies for the 27 parameters selected for optimal classification in 4 patterns. These parameters (m1 to m27) were statistical measures used to capture differences for a list of scores collected at different time points for each patient
Fig. 2Representation of the quality of life change patterns over time
Characteristics of patients’ QoL change patterns
| Pattern 1* | Pattern 2 | Pattern 3 | Pattern 4 | ||
|---|---|---|---|---|---|
|
|
|
|
| Pa | |
| Number of patients | 24 | 171 | 78 | 143 | |
| Gender | |||||
| Men n(%) | 15 (63) | 128 (75) | 58 (74) | 108 (76) | 0.596 |
| Age (years) | |||||
| md ± inqb | 63 ± 17 | 61 ± 15 | 65 ± 19 | 60 ± 17 | 0.370 |
| Performance status at D0 | |||||
| =0-1c n (%) | 20 (83.3) | 151 (88.3) | 56 (71.8) | 126 (88.1) | 0.004 |
| =2 n (%) | 4 (16.7) | 20 (11.7) | 22 (28.2) | 17 (11.9) | |
| Type of tumor | |||||
| Diffuse n (%) | 7 (29.2) | 33(19.3) | 22(28.2) | 35(24.5) | 0.369 |
| Randomization arm | |||||
| FOLFIRI n (%) | 5 (20.8) | 93 (54.4) | 35 (44.9) | 74 (51.8) | 0.015 |
| Quality of life Score | |||||
| Score7-Score1 (p**) | 10.7 (0.520) | −13.4 (0.013) | −62.7 (0.038) | −67.6 (<10−3) | |
| SAEd | |||||
| n(%) | 13 (54) | 67 (39) | 62 (81) | 86 (60) | <10−3 |
| TTFe (weeks) | |||||
| md ± inq | 15 ± 18 | 30 ± 24 | 4 ± 7 | 20 ± 12 | <10−3 |
| Death | |||||
| n(%) | 3 (13) | 18 (11) | 78 (100) | 131 (92) | <10−3 |
: p for significance
:median ± inter-quartile range
Performance status
0 = Fully active, able to carry on all pre-disease performance / 1 = Restricted in physically strenuous activity but ambulatory and able to carry out work of a light or sedentary nature
2 = Ambulatory and capable of all selfcare but unable to carry out any work activities. Up and about more than 50 % of waking hours
Serious adverse events
time to therapeutic failure of the first-line treatment
time (unit = weeks) and the physical functioning scale scores (range [0–100])
p for significance of the slope predicted by a linear model
Fig. 3Description of the different change patterns using variables describing each patient individually
Fig. 4Visualization for each pattern with regard to the different clusters of patients’ individual score patterns (ISP)