I have a set of data I have generated that consists of extracted mass (well, m/z but that not so important) values and a time. I extract the data from the file, however, it is possible to get repeat measurements and this results in a large amount of redundancy within the dataset. I am looking for a method to cluster these in order to group those that are related based on either similarity in mass alone, or similarity in mass and time.
An example of data that should be group together is:
However, I have no way to determine how many clusters I will have. Does anyone know of an efficient way to accomplish this, possibly using a simple distance metric? I am not familiar with clustering algorithms sadly.