| Literature DB >> 24936414 |
Paul Bentley1, Jeban Ganesalingam1, Anoma Lalani Carlton Jones1, Kate Mahady1, Sarah Epton1, Paul Rinne1, Pankaj Sharma1, Omid Halse1, Amrish Mehta1, Daniel Rueckert1.
Abstract
A critical decision-step in the emergency treatment of ischemic stroke is whether or not to administer thrombolysis - a treatment that can result in good recovery, or deterioration due to symptomatic intracranial haemorrhage (SICH). Certain imaging features based upon early computerized tomography (CT), in combination with clinical variables, have been found to predict SICH, albeit with modest accuracy. In this proof-of-concept study, we determine whether machine learning of CT images can predict which patients receiving tPA will develop SICH as opposed to showing clinical improvement with no haemorrhage. Clinical records and CT brains of 116 acute ischemic stroke patients treated with intravenous thrombolysis were collected retrospectively (including 16 who developed SICH). The sample was split into training (n = 106) and test sets (n = 10), repeatedly for 1760 different combinations. CT brain images acted as inputs into a support vector machine (SVM), along with clinical severity. Performance of the SVM was compared with established prognostication tools (SEDAN and HAT scores; original, or after adaptation to our cohort). Predictive performance, assessed as area under receiver-operating-characteristic curve (AUC), of the SVM (0.744) compared favourably with that of prognostic scores (original and adapted versions: 0.626-0.720; p < 0.01). The SVM also identified 9 out of 16 SICHs, as opposed to 1-5 using prognostic scores, assuming a 10% SICH frequency (p < 0.001). In summary, machine learning methods applied to acute stroke CT images offer automation, and potentially improved performance, for prediction of SICH following thrombolysis. Larger-scale cohorts, and incorporation of advanced imaging, should be tested with such methods.Entities:
Keywords: Imaging; Machine learning; Prediction; Stroke; Thrombolysis
Mesh:
Substances:
Year: 2014 PMID: 24936414 PMCID: PMC4053635 DOI: 10.1016/j.nicl.2014.02.003
Source DB: PubMed Journal: Neuroimage Clin ISSN: 2213-1582 Impact factor: 4.881
Clinical and radiological characteristics of SICH and non-SICH groups.
| Variable | SICH | No SICH | Odds ratio | p-Value | No SICH (excluded) |
|---|---|---|---|---|---|
| Gender/% males | 63 | 49 | 1.74 (0.59–5.14) | 0.320 | 51 |
| Age/yrs | 75.1 (69.3–80.9) | 73.2 (70.7–75.7) | 1.01 (0.97–1.05) | 0.572 | 70.6 (68.3–72.9) |
| Treatment delay/min | 136 (112–159) | 146 (134–158) | 1.00 (0.99–1.01) | 0.509 | 152 (139–166) |
| Baseline NIHSS/42 | 15.3 (12.5–18.0) | 12.3 (11.2–13.3) | 1.10 (1.00–1.21) | 0.048* | 10.2 (9.1–11.3) |
| Systolic blood pressure/mm Hg | 161 (152–170) | 162 (156–167) | 1.00 (0.98–1.02) | 0.949 | 155 (151–159) |
| Glucose/mmol/l | 7.09 (6.3–7.9) | 7.55 (7.04–8.05) | 0.92 (0.71–1.18) | 0.490 | 7.26 (6.88–7.65) |
| INR | 1.08 (1.04–1.11) | 1.31 (1.05–1.57) | 0.14 (0.00–28.5) | 0.329 | 1.16 (1.01–1.32) |
| Platelets/× 109/l | 234 (193–276) | 238 (221–254) | 1.00 (0.99–1.01) | 0.880 | 253 (242–265) |
| Anti-thrombotic therapy/% | 75 | 62 | 1.84 (0.55–6.11) | 0.320 | 51 |
| CT — acute ischemia/% | 63 | 27 | 3.31 (1.12–9.74) | 0.008** | 24 |
| CT — acute ischemia > 1/3 MCA territory/% | 31 | 6 | 5.22 (1.29–21.2) | 0.004** | 3 |
| CT — hyperdense MCA sign/% | 38 | 17 | 4.41 (1.42–13.6) | 0.064 | 19 |
| CT — white matter Fazekas score/3 | 0.81 (0.46–1.17) | 1.13 (0.95–1.31) | 0.64 (0.33–1.24) | 0.185 | 1.14 (1.01–1.26) |
| SEDAN score/6 | 2.50 (2.97–2.03) | 2.05 (1.82–2.28) | 1.43 (0.90–2.30) | 0.146 | 1.66 (1.46–1.85) |
| HAT score/5 | 1.63 (0.96–2.29) | 1.03 (0.82–1.24) | 1.49 (0.95–2.32) | 0.053 | 0.75 (0.60–0.89) |
| SEDAN score — NIHSS, CT only/3 | 1.88 (1.44–2.31) | 1.10 (0.91–1.29) | 2.23 (1.28–3.89) | 0.006** | 0.82 (0.65–0.95) |
| HAT score — NIHSS, CT only/5 | 1.63 (0.96–2.29) | 0.95 (0.75–1.15) | 1.60 (1.02–2.52) | 0.027* | 0.64 (0.50–0.78) |
| ‘Automated’ SVM/distance from hyperplane (arbitrary units) | − 3.25 (− 6.47–−0.03) | 3.25 (2.31–4.19) | 1.28 (1.12–1.45) | < 0.0001** | n/a |
| ‘Manual’ SVM/distance from hyperplane (arbitrary units) | − 3.55 (− 8.45–1.34) | 3.55 (1.81–5.30) | 1.08 (1.02–1.14) | 0.008** | n/a |
Mean (95% confidence intervals) quoted. Odds ratio and p-value relate to univariate logistic regression analyses comparing SICH with non-SICH. SICH: Symptomatic Intracranial Haemorrhage; NIHSS: National Institute of Health Stroke Scale; INR: International Normalised Ratio. SEDAN score predictors: glucose (2 points), baseline NIHSS, CT acute ischemia, hyperdense MCA sign, and age (1 point each); HAT score predictors: glucose (1 point), CT acute ischemia > or < 1/3 MCA territory, and baseline NIHSS (2 points each). ‘Adapted’ HAT and SEDAN Scores (last two rows) included only NIHSS and radiological components of their original versions, with identical weightings for these. ‘Automated’ and ‘Manual’ SVMs represent subjects' predicted output values from support vector machines using raw images, or radiological scores (acute ischemia, hyperdense MCA sign), respectively, *< 0.05; **< 0.01. Final column characterises non-SICH subjects from the total cohort that were not analysed; this group did not differ significantly from the analysed group in any of the measured variables.
Fig. 1Example of CT normalisation pipeline in one subject. Source images were acquired in top and bottom sections (A) that were normalised respectively to whole-brain and bottom CT templates (B). The two normalised images (C) were joined (D) whereby voxels that were sampled in both images were averaged, and some voxels were sampled in neither (seen as a black ‘join’ anteriorly). The resultant images were inclusively masked by a brain template, but sometimes this included patients' cranium (revealed as anomalous Hounsfield Unit > 200): E shows where this occurred in ≥ 5 subjects, these voxels then being excluded. Most patients also showed a thin non-sampled join, although the location of this differed slightly across subjects. These and other anomalous voxels that occurred in < 5 subjects were replaced by their mean from the remaining set of subjects, and are identified in F.
Predictive performance of automated SVM compared to other prognostic methods.
SVM: Support vector machines, using either raw images (‘automated’) or radiologist-derived reports of acute ischemia and hyperdense MCA (‘manual’).
AUC: area under receiver operating characteristic curve (95% confidence intervals).
SICH identity: For each SICH, the commonest ranking accorded by each model to the SICH subject is reported, across 110 tests, comprising 1 patient who develops SICH, and 9 who recover. Coding: ‘1’ represents most likely to develop SICH, and ‘10’ least likely. A bold '1' (shaded box) indicates that the specified model correctly predicted the specified SICH, in terms of placing it most likely out of 9 alternatives. Final two rows indicate the number of radiologists (0–3 represented as *) reporting acute ischemia (underlined if majority judged to be > 1/3 MCA territory), or MCA hyperdensity.
aThese subjects' haemorrhages were judged to be remote from the acute ischemic territory.