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Aki Koivu

Showing results (1-10 of 9) with videos related to

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Health Information Science and Systems|April 1, 2020
Predicting risk of stillbirth and preterm pregnancies with machine learningAki Koivu, Mikko Sairanen
World Journal of Otorhinolaryngology - Head and Neck Surgery|January 1, 2026
Applications of Artificial Intelligence in Neurological Voice DisordersDongren Yao, Aki Koivu, Kristina Simonyan
Journal of the American Medical Informatics Association : JAMIA|September 5, 2020
Synthetic minority oversampling of vital statistics data with generative adversarial networksAki Koivu, Mikko Sairanen, Antti Airola, et al.
Computers in Biology and Medicine|May 15, 2018
Evaluation of machine learning algorithms for improved risk assessment for Down's syndromeAki Koivu, Teemu Korpimäki, Petri Kivelä, et al.
JAMA Network Open|December 2, 2020
Evaluation of Circulating Cardiovascular Biomarker Levels for Early Detection of Congenital Heart Disease in Newborns in SwedenHenning Clausen, Elisabeth Norén, Salla Valtonen, et al.
The Laryngoscope|September 4, 2025
Feasibility of Real-Time Automated Vocal Fold Motion Tracking for In-Office LaryngoscopyAki Koivu, Obinna I Nwosu, Mitsuki Ota, et al.
JAMA Network Open|June 24, 2024
Newborn Screening for High-Risk Congenital Heart Disease by Dried Blood Spot Biomarker AnalysisHenning Clausen, Elin Friberg, Katarina Lannering, et al.
American Journal of Obstetrics and Gynecology|December 18, 2024
First-trimester nuclear magnetic resonance-based metabolomic profiling increases the prediction of gestational diabetes mellitusLuiza Borges Manna, Argyro Syngelaki, Peter Würtz, et al.
Computers in Biology and Medicine|September 27, 2021
Adaptive risk prediction system with incremental and transfer learningAki Koivu, Mikko Sairanen, Antti Airola, et al.
Pageof 1

Showing results (1-10 of 9) with videos related to

Sort By:
Pageof 1
Health Information Science and Systems|April 1, 2020
Predicting risk of stillbirth and preterm pregnancies with machine learningAki Koivu, Mikko Sairanen
World Journal of Otorhinolaryngology - Head and Neck Surgery|January 1, 2026
Applications of Artificial Intelligence in Neurological Voice DisordersDongren Yao, Aki Koivu, Kristina Simonyan
Journal of the American Medical Informatics Association : JAMIA|September 5, 2020
Synthetic minority oversampling of vital statistics data with generative adversarial networksAki Koivu, Mikko Sairanen, Antti Airola, et al.
Computers in Biology and Medicine|May 15, 2018
Evaluation of machine learning algorithms for improved risk assessment for Down's syndromeAki Koivu, Teemu Korpimäki, Petri Kivelä, et al.
JAMA Network Open|December 2, 2020
Evaluation of Circulating Cardiovascular Biomarker Levels for Early Detection of Congenital Heart Disease in Newborns in SwedenHenning Clausen, Elisabeth Norén, Salla Valtonen, et al.
The Laryngoscope|September 4, 2025
Feasibility of Real-Time Automated Vocal Fold Motion Tracking for In-Office LaryngoscopyAki Koivu, Obinna I Nwosu, Mitsuki Ota, et al.
JAMA Network Open|June 24, 2024
Newborn Screening for High-Risk Congenital Heart Disease by Dried Blood Spot Biomarker AnalysisHenning Clausen, Elin Friberg, Katarina Lannering, et al.
American Journal of Obstetrics and Gynecology|December 18, 2024
First-trimester nuclear magnetic resonance-based metabolomic profiling increases the prediction of gestational diabetes mellitusLuiza Borges Manna, Argyro Syngelaki, Peter Würtz, et al.
Computers in Biology and Medicine|September 27, 2021
Adaptive risk prediction system with incremental and transfer learningAki Koivu, Mikko Sairanen, Antti Airola, et al.
Pageof 1