I'm assuming that you are able to obtain a sequence of numerical values representing the waveform (presumably an array). In case you don't already have this (which would be surprising), you can get this from your AChartEngine model data series using the
getRange() method. XYSeries getRange() method.
ACharEngine does allow you to separate segments of a wave, but it does not have any signal processing capabilities.
Once you have your wave form data, you can move on to processing.
Peak-to-peak: Finding peak values of an ECG signal is not trivial. You can, with a large error margin, de-trend the data (ECG signal baseline tends to wander) and set a margin. Consider everything above the margin a peak. Google will tell you of other more precise algorithms. Also, check out this other question.
Remember, however, that an ECG's peak-to-peak ratio only tells you about the heart rate, not necessarily anything else about the shape of the signal.
Patter recognition: I would say that the best way to do this would be a simple cross correlation between your known signal (the defective heart beat) and your measured signal. The result will be a third signal, with one or more peaks if the signals match at any given point in time.
The biggest pitfall here will be the heart rate. If your reference heart rate is not the same as the measured one, it will be very difficult for this to work.
Check out Paul Bourke's page on Cross Correlation for a quick introduction.
Edit: I forgot the references for cross correlation in Java: I would use the Apache Commons Mathematics Library for this and other advanced math and processing operations. I've never used it myself, but I hear, the Java Speech Toolkit has a lot of signal processing capabilities.