| Literature DB >> 20691062 |
Christopher C L Liao1, Nicholas Ward, Simon Marsh, Tan Arulampalam, John D Norton.
Abstract
BACKGROUND: Studies of several tumour types have shown that expression profiling of cellular protein extracted from surgical tissue specimens by direct mass spectrometry analysis can accurately discriminate tumour from normal tissue and in some cases can sub-classify disease. We have evaluated the potential value of this approach to classify various clinico-pathological features in colorectal cancer by employing matrix-assisted laser desorption ionisation time of-flight-mass spectrometry (MALDI-TOF MS).Entities:
Mesh:
Substances:
Year: 2010 PMID: 20691062 PMCID: PMC2927547 DOI: 10.1186/1471-2407-10-410
Source DB: PubMed Journal: BMC Cancer ISSN: 1471-2407 Impact factor: 4.430
Clinico-pathological features of patient specimens
| Tumour | 1NM | Age | Gender | Dukes' stage | TNM stage | Differentiation | Vascular | 2LNs harvested | LNs pos | Patient status | 3Follow-up time |
|---|---|---|---|---|---|---|---|---|---|---|---|
| - | 001NM | 78 | F | B | pT3, pN0, pR0 | Poor | Absent | 15 | 0 | Well & symptom free | 48 |
| 002T | 002NM | 91 | M | B | pT3, pN0, pR0 | Moderate | Absent | 9 | 0 | Deceased (recurrence) | 35 |
| 003T | 003NM | 75 | M | C1 | pT3, pN1, pR0 | Poor | Absent | 10 | 3 | Well & symptom free) | 36 |
| 004T | 004NM | 74 | F | C1 | pT4, pN1, pR2 | Poor | Present | 11 | 3 | Deceased (recurrence) | <1 |
| 005T | 005NM | 76 | M | B | pT3, pN0, pR0 | Poor | Absent | 6 | 0 | Well & symptom free | 49 |
| - | 006NM | 69 | F | A | pT2, pN0, pR0 | Well | Absent | 11 | 0 | Well & symptom free | 40 |
| - | 007NM | 52 | M | C1 | pT3, pN1, pR0 | Poor | Absent | 23 | 3 | Well & symptom free | 48 |
| 008T | 008NM | 63 | F | C1 | pT4, pN0, pR0 | Poor | Absent | 10 | 0 | Deceased (recurrence) | 40 |
| 009T | 009NM | 68 | M | B | pT3, pN0, pR0 | Poor | Absent | 8 | 8 | Well & symptom free | 36 |
| 011T | 011NM | 77 | M | C1 | pT4,p N1, pR0 | Poor | Absent | 15 | 3 | Well & symptom free | 40 |
| 016T | 016NM | 61 | M | C2 | pT2, pN2, pR0 | Moderate | Present | 14 | 5 | Well & symptom free | 43 |
| 017T | 017NM | 65 | F | B | pT3, pN0, pR0 | Moderate | Absent | 14 | 0 | Well & symptom free | 39 |
| 020T | 020NM | 65 | F | B | pT3, pN0, pR0 | Poor | Absent | 12 | 0 | Well & symptom free | 36 |
| 021T | 021NM | 72 | M | B | pT4, pN1, pR0 | Moderate | Present | 5 | 1 | Well & symptom free | 28 |
| 023T | 023NM | 59 | M | B | pT3, pN0, pR0 | Moderate | Absent | 10 | 0 | Well & symptom free | 20 |
| 024T | 024NM | 41 | F | C2 | pT4, pN1, pRx | Well | Absent | 15 | 2 | Deceased (recurrence) | 30 |
| 025T | - | 82 | M | B | pT4, pN0, pMx, pRx | Poor | Absent | 7 | 0 | Deceased (recurrence) | 13 |
| 026T | 026NM | 76 | F | A | pT2, pN0, pR0 | Moderate | Absent | 5 | 0 | Deceased (recurrence) | 36 |
| 028T | 028NM | 86 | F | C1 | pT3, pN1, pR0 | Moderate | Absent | 12 | 0 | Well & symptom free | 36 |
| 029T | 029NM | 71 | F | B | pT3, pN0, pR0 | Well | Absent | 32 | 0 | Well & symptom free | 36 |
| 031T | 031NM | 82 | M | C2 | pT3, pN2, pR0 | Poor | Present | 11 | 3 | Well & symptom free | 36 |
| 032T | 032NM | 69 | F | B | pT4, pN0, pR0 | Moderate | Absent | 11 | 0 | Well & symptom free | 23 |
| 033T | 033NM | 72 | M | C1 | pT4, pN1, pR0 | Moderate | Absent | 8 | 1 | Well & symptom free | 22 |
| 034T | 034NM | 58 | M | C1 | pT4, pN1, pR0 | Moderate | Absent | 5 | 3 | Well & symptom free | 25 |
| - | 035NM | 77 | F | B | pT3, pN0, pR0 | Poor | Absent | 7 | 0 | Well & symptom free | 25 |
| 036T | - | 81 | F | B | pT3, pN0, pR0 | Moderate | Absent | 13 | 0 | Well & symptom free | 21 |
| 037T | 037NM | 77 | F | B | pT3, pN0, pR0 | Well | Absent | 7 | 0 | Well & symptom free | 19 |
| 038T | 038NM | 76 | F | A | pT2, pN1, pR0 | Poor | Absent | 5 | 1 | Well & symptom free | 20 |
| 039T | 039NM | 75 | F | B | pT3, pN0, pR0 | Moderate | Absent | 16 | 0 | Well & symptom free | 23 |
| 2012T | 2012NM | 62 | M | C1 | pT3, pN1, pR0 | Poor | Present | 18 | 3 | Well & symptom free | 20 |
| 2018T | 2018NM | 83 | F | A | pT1, pN0, pR0 | Moderate | Absent | 6 | 0 | Deceased (unrelated) | 2 |
| 2022T | 2022NM | 56 | M | B | pT3, pN0, pR0 | Well | Present | 20 | 0 | Well & symptom free | 20 |
| 2044T | 2044NM | 82 | M | A | pT2, pN0, pR0 | Moderate | Absent | 10 | 0 | Well & symptom free | 21 |
| - | 2080NM | 72 | F | A | pT2, pN0, pR0 | Moderate | Absent | 5 | 0 | Well & symptom free | 21 |
| 2084T | - | 38 | M | B | ypT3, ypN0, ypR0 | Poor | Absent | 10 | 0 | Well & symptom free | 20 |
| 2085T | 2085NM | 78 | F | C1 | pT3, pN1, pR0 | Moderate | Absent | 11 | 1 | Deceased (unrelated) | <1 |
1NM = normal mucosa; 2LN = lymph node; 3follow-up time in months
Figure 1Unsupervised hierarchical cluster analysis of tumour and normal mucosa spectra. The dendrogram and heatmap show the clustering of Tumour (T) and normal mucosa (NM) spectra using Euclidean correlation as the column distance measure with pair-wise average linkage as the clustering method. Row clustering (not shown) used Spearman's rank correlation as distance measure with pair-wise complete linkage as the clustering method. Specimens are colour-coded as green (NM) and red (T).
Figure 2Probability distribution of marker peaks distinguishing tumour from normal mucosa. Spectra from all 64 tumour and normal tissue samples were analysed by Comparative Gene Marker Selection [28] using the SNR test statistic to identify peaks (features) that discriminate tumour from normal tissue. The feature P histogram shows the number of peaks (occurrences) that fall within binned P values.
Figure 3Heat map profile of marker peaks discriminating tumour from normal mucosa. The expression profiles and m/z values of the top 73 ranked peaks identified by Comparative Gene Marker Selection [28] (P = ≤ 0.01, FDR = ≤ 0.05) are depicted for all 64 tissue specimens.
Performance of predictive models for classification of clinico-pathological characteristics in tumour tissue
| CHARACTERISTICS | 1Advanced Dukes' | Poorly differentiated | Lymph node | Invasiveness | 2Disease recurrence |
|---|---|---|---|---|---|
| Number of features | 5 | 2 | 4 | 9 | 10 |
| Positive prediction rate | 6/12 | 10/13 | 5/13 | 3/7 | 5/6 |
| Sensitivity | 0.500 | 0.769 | 0.385 | 0.429 | 0.833 |
| 3CI | 0.223-0.777 | 0.460-0.938 | 0.151-0.677 | 0.118-0.798 | 0.364-0.991 |
| Positive predictive value | 0.750 | 0.833 | 0.625 | 0.750 | 0.833 |
| CI | 0.356-0.955 | 0.509-0.971 | 0.259-0.898 | 0.219-0.986 | 0.364-0.991 |
| Negative prediction rate | 17/19 | 16/18 | 15/18 | 23/24 | 22/23 |
| Specificity | 0.894 | 0.889 | 0.833 | 0.958 | 0.957 |
| CI | 0.654-0.981 | 0.639-0.981 | 0.577-0.956 | 0.768-0.998 | 0.760-0.998 |
| Negative predictive value | 0.739 | 0.842 | 0.652 | 0.852 | 0.957 |
| CI | 0.513-0.889 | 0.585-0.958 | 0.428-0.828 | 0.654-0.951 | 0.760-0.998 |
| Absolute error | 0.258 | 0.161 | 0.355 | 0.161 | 0.069 |
| 4ROC error | 0.302 | 0.171 | 0.391 | 0.307 | 0.105 |
| Fisher's exact test | |||||
1Includes Dukes' C1 and C2; 2 Median follow-up time for recurrent disease patients: 33 months; median follow-up time for disease-free patient: 27 months (analysis excludes patients who died through surgical complications - see Table 1); 3CI = 95% confidence interval; 4ROC = receiver-operator characteristics
The KNN algorithm [29] was used in 'leave-one-out' cross-validation prediction with the number of features (marker peaks) specified. Marker peaks were selected using a t-test statistic except for lymph node involvement and invasiveness characteristics of tumour tissue where the SNR test statistic was used.
Figure 4Relative ion intensity profiles of marker peaks used in predictive algorithms of tumour/mucosa clinico-pathological features. The peak intensity profiles of the top two-ranked scoring peaks are shown for tumour spectra (A) for classifying differentiation and disease recurrence and for normal mucosa spectra (B) for classifying lymph node involvement (see Table 2). The performance of predictive models for these clinico-pathological features are shown in additional file 4 (differentiation), in additional file 5 (disease recurrence) and in additional file 6 (lymph node involvement). The t-test P value is given for each marker peak.
Performance of predictive models for classification of clinico-pathological characteristics in normal mucosa tissue.
| CHARACTERISTICS | 1Advanced Dukes' | Poorly differentiated | Lymph node | Invasiveness | 2Disease recurrence |
|---|---|---|---|---|---|
| Number of features | 7 | 5 | 3 | 6 | 7 |
| Positive prediction rate | 8/13 | 8/14 | 11/14 | 3/7 | 0/5 |
| Sensitivity | 0.615 | 0.571 | 0.786 | 0.429 | 0.000 |
| 3CI | 0.322-0.849 | 0.296-0.812 | 0.488-0.943 | 0.116-0.798 | 0.000-0.537 |
| Positive predictive value | 0.500 | 0.444 | 0.733 | 0.500 | 0.000 |
| CI | 0.255-0.749 | 0.224-0.686 | 0.448-0.911 | 0.139-0.860 | 0.000-0.945 |
| Negative prediction rate | 12/20 | 9/19 | 15/19 | 23/26 | 25/26 |
| Specificity | 0.600 | 0.474 | 0.789 | 0.885 | 0.962 |
| CI | 0.364-0.800 | 0.252-0.705 | 0.539-0.930 | 0.687-0.970 | 0.784-0.998 |
| Negative predictive value | 0.706 | 0.600 | 0.833 | 0.852 | 0.833 |
| CI | 0.440-0.886 | 0.329-0.825 | 0.577-0.956 | 0.654-0.951 | 0.645-0.937 |
| Absolute error | 0.394 | 0.485 | 0.212 | 0.212 | 0.194 |
| 4ROC error | 0.392 | 0.477 | 0.212 | 0.343 | 0.519 |
| Fisher's exact test | |||||
1Includes Dukes' C1 and C2; 2 Median follow-up time for recurrent disease patients: 33 months; median follow-up time for disease-free patient: 27 months (analysis excludes patients who died through surgical complications - see Table 1); 3CI = 95% confidence interval; 4ROC = receiver-operator characteristics
The KNN algorithm [29] was used in 'leave-one-out' cross-validation prediction with the number of features (marker peaks) specified. Marker peaks were selected using a t-test statistic except for lymph node involvement and invasiveness characteristics of tumour tissue where the SNR test statistic was used.