| Literature DB >> 27501728 |
James Alexander1, Louise Gildea1, Julia Balog2, Abigail Speller3, James McKenzie1, Laura Muirhead1, Alasdair Scott1, Christos Kontovounisios4, Shanawaz Rasheed4, Julian Teare1, Jonathan Hoare5, Kirill Veselkov1, Robert Goldin3, Paris Tekkis4, Ara Darzi1, Jeremy Nicholson1, James Kinross6, Zoltan Takats1.
Abstract
BACKGROUND: This pilot study assessed the diagnostic accuracy of rapid evaporative ionization mass spectrometry (REIMS) in colorectal cancer (CRC) and colonic adenomas.Entities:
Keywords: Colorectal cancer; Metabolic; Rapid evaporative ionization mass spectrometry
Mesh:
Substances:
Year: 2016 PMID: 27501728 PMCID: PMC5315709 DOI: 10.1007/s00464-016-5121-5
Source DB: PubMed Journal: Surg Endosc ISSN: 0930-2794 Impact factor: 4.584
Patient demographics and histopathological classification from ex vivo analysis
| Male/female | 11/15 |
| Median age (range) | 71 (35–89) |
| Primary/recurrence | 24/2 |
| Neoadjuvant treatment | 4 |
| Site of lesion | |
| Cecum | 6 |
| Ascending colon | 1 |
| Transverse colon | 2 |
| Descending colon | 0 |
| Sigmoid colon | 7 |
| Rectum | 10 |
| Histopathology | |
| Adenoma | 2a |
| Adenocarcinoma | 15 |
| Mucinous adenocarcinoma | 8 |
| Gastrointestinal stromal tumor (GIST) | 1 |
| Tumor differentiation | |
| Well | 1 |
| Moderate | 16 |
| Poor | 5 |
| Not applicable | 4b |
| T stage | |
| T0 | 4b |
| T1 | 1 |
| T2 | 5 |
| T3 | 11 |
| T4 | 5 |
| N stage | |
| N0 | 19 |
| N1 | 6 |
| N2 | 1 |
| M stage | |
| M0 | 25 |
| M1 | 1 |
| Extramural vascular invasion | 7 |
| Lymphovascular invasion | 9 |
| Tumor budding | 16 |
a Benign histology but with suspicious features on preoperative imaging
b In addition to the two patients’ tumors which were histologically adenomas, two patients had no viable tumor remaining after complete pathological response to neoadjuvant therapy
Fig. 1Example spectra from NAM, malignant and adenomatous tissue; the 600–900 m/z range has been selected. Box plots representing statistically significant phospholipid species from the entire sample set are demonstrated identifying statistically significant quantitative changes in lipid expression between tissue types
Summary diagnostic and sensitivity data from the multivariate models
| Spectra | Accuracy | True positive | True negative | False positive | False negative | AUC | |
|---|---|---|---|---|---|---|---|
| Diagnostic markers all | |||||||
| Cancer versus NAM | 220 | 90.5 % | 86.7 % | 92.4 % | 13.3 % | 7.6 % | 0.96 |
| Cancer versus adenoma | 89 | 94.4 % | 78.6 % | 97.3 % | 2.7 % | 21.4 % | 0.99 |
| Adenoma versus NAM | 159 | 97.5 % | 85.7 % | 98.6 % | 1.4 % | 14.3 % | 0.99 |
| Histological subtype (mucinous vs. adenocarcinoma) | 75 | 90 % | 94.2 % | 83.3 % | 16.7 % | 5.8 % | 0.96 |
| Prognostic performance—whole model | |||||||
| Tumor differentiation (mod vs. poor) | 183 | 83.1 % | 68.3 % | 87.3 % | 12.7 % | 31.7 % | 0.88 |
| Tumor budding | 234 | 78.2 % | 80.6 % | 74.4 % | 25.6 % | 19.4 % | 0.87 |
| LVI | 234 | 73.9 % | 71.6 % | 75.3 % | 24.7 % | 28.4 % | 0.83 |
| EMVI | 234 | 73.5 % | 65.3 % | 77.2 % | 22.8 % | 34.7 % | 0.81 |
| +ve nodes | 234 | 77.4 % | 69.0 % | 81.0 % | 19.0 % | 31.0 % | 0.81 |
| Rectal cancer prognostic factors | |||||||
| Differentiation (mod vs. poor) | 84 | 94.4 % | 78.6 % | 98.2 % | 1.8 % | 21.4 % | 0.99 |
| Tumor budding | 84 | 84.5 % | 88.1 % | 70.6 % | 29.4 % | 11.9 % | 0.82 |
| LVI | 84 | 71.4 % | 72.4 % | 30.8 % | 69.2 % | 27.6 % | 0.75 |
| EMVI | 84 | 96.4 % | 85.7 % | 98.6 % | 14.3 % | 1.4 % | 0.98 |
| +ve nodes | 84 | 92.9 % | 83.3 % | 94.4 % | 5.6 % | 16.7 % | 0.92 |
| LCRT versus none | 75 | 96 % | 95.7 % | 96.2 % | 3.8 % | 4.3 % | 0.99 |
| cPR versus NAM | 52 | 100 % | 100 % | 100 % | 0 % | 0 % | 1 |
AUC area under curve, NAM normal adjacent mucosa, Mod moderate, LCRT long-course chemoradiotherapy, cPR complete pathological response
Fig. 2Summary diagnostic colorectal data analyzed by REIMS. A An LDA scores plot, demonstrating class separation between normal associated mucosa (NAM), cancer and adenomas. The confusion matrices showing the sensitivity and specificity of B NAM versus Tumor C Tumor versus adenoma and D NAM versus adenoma are demonstrated in the corresponding ROC curves
Summary putative metabolite IDs for cancer, adenoma and normal colonic mucosa, their m/z and statistical significance (p value)
The array visualization demonstrates if the metabolites were over-expressed (red) or under-expressed (green) in specific histological states of cancer, adenoma or normal associated mucosa
Fig. 4Summary overview of the iEndoscope platform. This technology requires minimal deviation from a standard endoscopic set up with A A typical stack and B Any commercially available endoscope. C A standard electrosurgical generator is deployed during ‘hot’ endoscopic resection. D We have created a modified snare with a fenestrated distal sheath for improved efficiency of smoke aspiration. This was developed in three variants. It has a working channel for aspiration directly to F a mobile mass spectrometer, with a self contained spectral database sited in the endoscopy suite. Data are in practice displayed as a simple visual readout providing data on predicted histological diagnosis and percentage chances that this is correct. However, the entire spectra are displayed, and the 600–900 m/z range is shown in more detail, as this range is typically used in the multivariate analysis. The predominant phospholipid and triglyceride peaks can be visualized. G An adenoma snared during an in vivo assessment of the REIMS platform with representative anatomically discrete lipidomic data captured during hot snare deployment
Fig. 3Summary LDA scores plots and associated ROC curves for associations with established histopathological biomarkers of poor prognosis. The model was able to identify those patients that had undergone neoadjuvant LCRT. It was also able to provide robust models for A tumor budding B differentiation C LVI, D EMVI and E Lymph node micrometastases