| Literature DB >> 31096576 |
Hamid Khodakarami1, Parisa Farzanehfar2, Malcolm Horne3,4.
Abstract
Device-assisted therapies (DAT) benefit people with Parkinsons Disease (PwP) but many referrals for DAT are unsuitable or too late, and a screening tool to aid in identifying candidates would be helpful. This study aimed to produce such a screening tool by building a classifier that models specialist identification of suitable DAT candidates. To our knowledge, this is the first objective decision tool for managing DAT referral. Subjects were randomly assigned to either a construction set (n = 112, to train, develop, cross validate, and then evaluate the classifier's performance) or to a test set (n = 60 to test the fully specified classifier), resulting in a sensitivity and specificity of 89% and 86.6%, respectively. The classifier's performance was then assessed in PwP who underwent deep brain stimulation (n = 31), were managed in a non-specialist clinic (n = 81) or in PwP in the first five years from diagnosis (n = 22). The classifier identified 87%, 92%, and 100% of the candidates referred for DAT in each of the above clinical settings, respectively. Furthermore, the classifier score changed appropriately when therapeutic intervention resolved troublesome fluctuations or dyskinesia that would otherwise have required DAT. This study suggests that information from objective measurement could improve timely referral for DAT.Entities:
Keywords: bradykinesia; deep brain stimulation; device assisted therapies; dyskinesia; objective measurement; wearing off
Mesh:
Substances:
Year: 2019 PMID: 31096576 PMCID: PMC6568025 DOI: 10.3390/s19102241
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Comparisons of the clinical and Parkinson’s KinetiGraph (PKG) characteristics of people with Parkinson’s (PwP) who were classified according to whether they met the clinical criteria for device-assisted therapies (DAT) (criteria positive (CP)) or did not (criteria negative (CN)) for DAT.
| N Total = 172 | CP | CN | Δ | |
|---|---|---|---|---|
| Male | 66% | 70% | ||
| Female | 34% | 30% | ||
| Age | 62 (56–67) | 71 (66–75) | 9 | 0.13 |
| UPDRS I | 6 (3–10.5) | 8 (5–13) | −2 | 0.02 |
| UPDRS II | 13 (10–18) | 7 (4–12) | 6 | 0.0001 |
| UPDRS III | 27 (19–37) | 25 (18–35) | 2 | 0.3 |
| UPDRS IV | 7 (4–9) | 1 (0–4) | 6 | 0.0001 |
| UPDRS Total | 54 (46–72) | 43 (32–59) | 11 | 0.001 |
| Median BKS | 20.8 (16.4–25.4) | 24 (21.7–27) | −3.2 | 0.0001 |
| PTB | 37.5 (19.1–55.9) | 47.7 (35–65.1) | 10.2% (1.6 h) | 0.0004 |
| Median DKS | 5.1 (2.4–13.5) | 2 (0.9–3.8) | 3.1 | 0.0001 |
| PTD | 23.9 (10.2–46.7) | 7.3 (2.9–13.3) | 16.6% (2.7 h) | 0.0001 |
| DBSS | 0.96 (0.82–0.99) | 0.16 (0.02–0.5) | 0.8 | 0.0001 |
| doses/day | 5 (5–6) | 4 (3–4) | 1 | 0.0001 |
| PTT | 0.8 (0.3–2.1) | 0.8 (0.4–2) | 0 | 0.6 |
| PTI | 4.1 (1.5–.8) | 4.8 (2.8–8.9) | 0.7 | 0.02 |
The incremental joint mutual information of PKG variables with CP and CN labels.
| PKG Variable | Joint Mutual Information | Clinical Information Represented by the PKG Data |
|---|---|---|
| Doses of l-dopa | 0.25 | Dose of levodopa/day |
| DKS 75 | 0.11 | Severity of dyskinesia |
| BKS 25 | 0.08 | Severity of bradykinesia |
| BKS 75 | 0.08 | Fluctuation in bradykinesia |
| PT in DK | 0.06 | Time in “troublesome” dyskinesia |
| PTI | 0.05 | Time asleep during the day |
| PTT | 0.04 | Time with tremor |
| PTO | 0.03 | Time “off” |
Figure 1(A) Is a plot of the first eight components (Y axis) of a PCA of the PKG’s parameters and the classification into CP and CN against the explained variance (X axis). (B,C) are three-dimensional plots of the first three components of the PCA. Points shown by green circles represent cases classified as CN, whereas red diamonds represent cases classified as CP (color intensity indicate position on the Z axis).
Figure 2(a) Shows the scores from the non-linear classifier as applied to the construction set (left pair) and the test set (right pair). Green circles represent PwP cases clinically classed as CN, whereas the red circles represent PwP cases clinically classed as CP. (b) Shows the outputs of the receiver operator statistic applied to the scores in Figure 2a. The orange curve shows the construction set and the blue line shows the test population. (c) Shows the scores from the linear and non-linear classifier when applied to the whole set. The grey shading around the non-linear classifier is to indicate that it was renamed the DAT classifier Score. (d) Shows the receiver operating characteristic (ROC) curve applied to the two groups of data shown in Figure 2c.
The performance of the optimized non-linear classifier in matching the Movement Disorder clinician’s decisions of whether a subject in the construction set met the clinical criteria for DAT (criteria positive (CP)) or did not (criteria negative (CN)).
| Construction Set | Test Set | Full Data Set | ||||
|---|---|---|---|---|---|---|
| Linear | Non-Linear | Linear | Non-Linear | Linear | Non-Linear | |
| Area | 0.92 | 0.94 | 0.93 | 0.93 | 0.93 | 0.93 |
| Optimum score | 58.3 | 61.1 | 58.3 | 61.1 | 58.3 | 61.1 |
| Sensitivity | 85.5 | 91.7 | 80 | 89 | 80 | 89 |
| Specificity | 84.6 | 84.6 | 88.5 | 86.6 | 88.5 | 86.6 |
Figure 3(a) Compares DAT classifier scores obtained from PwP prior to receiving DBS and six months after DBS and scores in the shaded area indicate a high risk of DAT being indicated. Green circles indicate four cases (green circles) who were not in this zone. Red circles represent cases whose scores did not fall below the high risk region after DBS. (b) Is a plot of each individual PwP’s DAT classifier score prior to DBS (Y axis) plotted against the change in DAT classifier scores after DBS (X axis). The coloring of the circles represents the same cases as in Figure 2a. The grey shading represents the predicted response range. (c) Compares DAT classifier scores from the PwP representing all PwP in a single population, (1) Opt PD (light green circles) were optimally controlled cases; (2) Pre Oral R shows the DAT classifier scores of PwP prior to attempting a change in oral therapy. The green circles indicate PwP who were under-treated, but treatment resulted in an increase in DAT classifier scores and their treating clinician now thought DAT was indicated. The blue circles represent two PwP whose DAT classifier scores remained high because of a lack of responsiveness to levodopa and artifactually elevated dyskinesia; (3) Post Oral R are cases whose DAT classifier scores were reduced when measured after the change in therapy (shown as dark red circles in Pre Oral R); (4) DAT R shows cases referred for DAT following attempts to change oral therapy (light red circles Pre Oral R). (d) Shows the individual PwP’s (pre Oral R) DAT classifier scores prior to a change in oral therapy (Y axis) plotted against the change in DAT classifier scores following that change (X axis). The coloring of the circles represents the same cases as in Figure 3c. (e) Combines Figure 3b,d to propose a response region (grey shading), where an effective optimization of therapy will fall. The region shade orange indicates failed optimization and the region in green indicates where increasing therapy has led an increased DAT classifier score.
Figure 4A plot of the mean DAT classifier scores (highest and lowest) for subjects who met the clinical criteria for DAT (CP, red line), would soon meet the criteria (CP-soon, blue line) or did not yet meet the criteria (CN, green line). Note that this assessment was applied at the PwP’s most recent visit and that not all subjects have been followed for the same length of time.