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Continual Multiple Instance Learning for Hematologic Disease Diagnosis.
In:. Berlin [u.a.]: Springer, 2026. 205 - 214 (Lect. Notes Comput. Sc. ; 16318 LNCS)
The dynamic environment of laboratories and clinics, with streams of data arriving on a daily basis, requires regular updates of trained machine learning models for consistent performance. Continual learning is supposed to help train models without catastrophic forgetting. However, state-of-the-art methods are ineffective for multiple instance learning (MIL), which is often used in single-cell-based hematologic disease diagnosis (e.g., leukemia detection). Here, we propose the first continual learning method tailored specifically to MIL. Our method is rehearsal-based over a selection of single instances from various bags. We use a combination of the instance attention score and distance from the bag mean and class mean vectors to carefully select which samples and instances to store in exemplary sets from previous tasks, preserving the diversity of the data. Using the real-world input of one month of data from a leukemia laboratory, we study the effectiveness of our approach in a class incremental scenario, comparing it to well-known continual learning methods. We show that our method considerably outperforms state-of-the-art methods, providing the first continual learning approach for MIL. This enables the adaptation of models to shifting data distributions over time, such as those caused by changes in disease occurrence or underlying genetic alterations.
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Publikationstyp
Artikel: Konferenzbeitrag
Schlagwörter
Continual Learning ; Hematologic Diseases ; Microscopy ; Multiple Instance Learning
ISSN (print) / ISBN
0302-9743
e-ISSN
1611-3349
Zeitschrift
Lecture Notes in Computer Science
Quellenangaben
Band: 16318 LNCS,
Seiten: 205 - 214
Verlag
Springer
Verlagsort
Berlin [u.a.]
Institut(e)
Institute of AI for Health (AIH)