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Publication | Open Access

Long short-term memory model – A deep learning approach for medical data with irregularity in cancer predication with tumor markers

50

Citations

16

References

2022

Year

Abstract

A cancer risk prediction tool was developed by training a LSTM model using a large but incomplete real-world dataset of TM values. The LSTM model was best able to handle irregular data compared to other ML models. The use of time-series TM data can further improve the predictive performance of LSTM models even when the intervals between tests vary widely. These risk prediction tools are useful to direct subjects to further screening sooner, resulting in earlier detection of occult tumors.

References

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