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This article uses the same principles as the previous article but here we will evaluate the models in another dataset, the “CU Ventricular Tachyarrhythmia Database” which contains 35 eight-minute ECG recordings of human subjects who experienced episodes of sustained ventricular tachycardia, ventricular flutter, and ventricular fibrillation.
This version of the analysis uses another scoring function, which is based on the F-score, and uses a simple approach to calculate the Precision and Recall. The Recall reflects the hability of the model to detect the labeled regime changes; the algorithm accounts as a “detection” if the prediction is within a window of 5 seconds (plus or minus 2.5s). The Precision reflects the hability of the model to avoid false positives; the algorithm accounts as a “false positive” when the prediction is outside a window of 10 seconds (plus or minus 5s) from the labeled regime change.
The F-score will be calculated giving more weight to the Recall (beta = 3). Except for the Fig. 1.9, all other figures will represent the F-score as \(Score = 1 - F_{score}\), to make it easier to compare with the previous score function.
This time, as we have already seen the results of the previous optimization, we will only tune the parameters that we have concluded that they are meaningful.
The variable for building the MP:
window_size
: the default parameter always used to build an MP.The variables used on the FLOSS algorithm:
regime_threshold
: the threshold below which a regime change is considered.regime_landmark
: the point in time where the regime threshold is applied.Using the tidymodels
framework, we performed a basic grid search on all these parameters as follows:
window_size
: 25 to 200, by 25 steps;regime_threshold
: 0.05 to 0.90, by 0.05 steps;regime_landmark
: 2 to 9.5, by 0.5 steps.As before, we started by computing the importance of each parameter1. We used the same approach using the Bayesian Additive Regression Trees (BART) model to fit the tuning parameters as predictors of the FLOSS score.
Before starting the parameter importance analysis, we need to consider the parameter interactions since this is usually the weak spot of the analysis techniques.
The BART model was fitted using the following parameters:
\[\begin{equation} \begin{aligned} E( score ) &= \alpha + window\_size\\ &\quad + regime\_threshold + regime\_landmark \end{aligned} \tag{1.1} \end{equation}\]
Fig. 1.2 shows the variable interaction strength between pairs of variables. That allows us to verify if there are any significant interactions between the variables. Here we see that the interaction between variables are minimal.
Warning: Using `size` aesthetic for lines was deprecated in ggplot2 3.4.0.
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Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
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After evaluating the interactions, we can then perform the analysis of the variable importance. The goal is to understand how the FLOSS score behaves when we change the parameters.
The techniques for evaluating the variable importances were described in the previous article.
Using the three techniques simultaneously allows a broad comparison of the model behavior3. All three methods are model-agnostic (separates interpretation from the model), but as we have seen, each method has its advantages and disadvantages4.
Fig. 1.3 then shows the variable importance using three methods: Feature Importance Ranking Measure (FIRM) using Individual Conditional Expectation (ICE), Permutation-based, and Shapley Additive explanations (SHAP). Here we see that all three methods agree on the importances.
Fig. 1.4 shows the effect of each feature on the FLOSS score.
Based on Figures 1.3 and 1.4 we can infer that:
regime_threshold
: is the most important feature, as in the previous dataset, and have a converging value.
regime_landmark
: seems to have lost its importance using this metric.
window_size
: has some importance, and as before, value below 75 starts to degrade the FLOSS score.
First, we will visualize how the models (in general) performed throughout the individual recordings.
Fig. 1.5 shows a violin plot of equal areas clipped to the minimum value. The blue color indicates the recordings with a small IQR (interquartile range) of model scores. We see on the left half 50% of the recordings with the worst minimum score, and on the right half, 50% of the recordings with the best minimum score.
Next, we will visualize some of these predictions to understand why some recordings were difficult to segment.
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ℹ Please use `reframe()` instead.
ℹ When switching from `summarise()` to `reframe()`, remember that `reframe()`
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Fig. 1.6 shows the best effort in predicting the most complex recordings. One information not declared before is that if the model does not predict any change, it will put a mark on the zero position. On the other side, the truth markers positioned at the beginning and the end of the recording were removed, as these locations lack information and do not represent a streaming setting.
Fig. 1.7 shows the best performances of the best recordings.
An online interactive version of all the datasets and predictions can be accessed at Shiny app (default Score).
Fig. 1.8 shows the distribution of the FLOSS score of the 25% worst (left side) and 25% best models across the recordings (right side). The bluish color highlights the models with SD below 0.5 and IQR below 0.5.
Warning: Returning more (or less) than 1 row per `summarise()` group was deprecated in
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ℹ Please use `reframe()` instead.
ℹ When switching from `summarise()` to `reframe()`, remember that `reframe()`
always returns an ungrouped data frame and adjust accordingly.
Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
generated.
Fig. 1.9 the performance of the six best models. They are ordered from left to right, from the best record to the worst record. The top model is the one with the highest mean across the scores. The blue line indicates the precision of the model, and the green line the recall. The black line with dots is the f-score. The red continuous and dashed lines are the median and the mean f-score respectively. The gray line limits the zero-score region.
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