| Literature DB >> 34396100 |
Timm B Poeppl1,2, Martin Schecklmann2, Katrin Sakreida1, Michael Landgrebe3, Berthold Langguth2, Simon B Eickhoff4,5.
Abstract
Non-invasive brain stimulation can reduce the severity of tinnitus phantom sounds beyond the time of stimulation by inducing regional neuroplastic changes. However, there are no good clinical predictors for treatment outcome. We used machine learning to investigate whether brain anatomy can predict therapeutic outcome. Sixty-one chronic tinnitus patients received repetitive transcranial magnetic stimulation of left dorsolateral prefrontal and temporal cortex. Before repetitive transcranial magnetic stimulation, a structural magnetic resonance image was obtained from all patients. To predict individual treatment response in new subjects, we employed a support vector machine ensemble for individual out-of-sample prediction. In the cross-validation, the support vector machine ensemble based on stratified sub-sampling and feature selection yielded an area under the curve of 0.87 for prediction of therapy success in new, previously unseen subjects. This corresponded to a balanced accuracy of 83.5%, sensitivity of 77.2% and specificity of 87.2%. Investigating the most selected features showed the involvement of the auditory cortex but also revealed a network of non-auditory brain areas. These findings suggest that idiosyncratic brain patterns accurately predict individual responses to repetitive transcranial magnetic stimulation treatment for tinnitus. Our findings may hence pave the way for future investigations into the precision treatment of tinnitus, involving automatic identification of the appropriate treatment method for the individual patient.Entities:
Keywords: machine learning; magnetic resonance imaging; phantom sounds; prediction; tinnitus
Year: 2021 PMID: 34396100 PMCID: PMC8361389 DOI: 10.1093/braincomms/fcab115
Source DB: PubMed Journal: Brain Commun ISSN: 2632-1297
Patients’ characteristics
| Non-responders | Responders |
| |
|---|---|---|---|
| Subjects ( | 39 | 22 | N/A |
| Age (years) | 52.5 ± 9.2 | 52.1 ± 12.4 | 0.881 |
| Sex (male/female) | 33/6 | 15/7 | 0.132 |
| Hearing loss (dB) | 21.0 ± 13.2 | 19.6 ± 12.1 | 0.743 |
| Tinnitus laterality (L/R/B) | 13/15/11 | 5/13/3 | 0.207 |
| Tinnitus duration (months) | 76.2 ± 79.2 | 98.4 ± 117.0 | 0.398 |
| Tinnitus severity (TQ) | 47.7 ± 19.8 | 44.4 ± 16.0 | 0.503 |
| Tinnitus change after rTMS (TQ) | 2.0 ± 4.5 | −10.2 ± 4.9 | <0.001 |
Values are reported as mean ± standard deviation. P-values were determined by a two-sample t-test for age, hearing loss, tinnitus duration and tinnitus severity and a χ2 test of independence for sex and tinnitus laterality.
Data available for 28/13 non-/responders.
Data available for 39/21 non-/responders.
Data available for 37/20 non-/responders.
Figure 1Performance of the classifier. Our SVM ensemble yielded an area under the curve of 0.87 for the prediction of individual therapeutic success (left). That is, on the basis of a whole-brain parcellation of grey matter, the machine learning algorithm predicted individual response to rTMS in tinnitus patients with an accuracy of 83.5% (right).
Figure 2Overview of selected features. The machine learning model was fitted on the depicted grey matter features from randomly subsets of the training data. The selection included auditory but also various non-auditory brain areas (left panel). Restriction to the most frequently (i.e. in at least 99% of the samples) selected regions revealed that the selection pattern was highly consistent. This pattern consisted of anatomical features of lateral and medial prefrontal cortex, opercular cortex and postcentral gyrus, occipitotemporal cortex, superior temporal cortex, pallidum, thalamus and cerebellum (right panel). Colours indicate the frequency of being selected.