Prediction of preterm and low birth weight risk using a physiology based artificial neural network integrating hematological, dental, and periodontal index markers: a cross sectional study based on machine learning
İsa Temur et al · BMC · 2026
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APA 7
al, İ. T. E. (2026). Prediction of preterm and low birth weight risk using a physiology based artificial neural network integrating hematological, dental, and periodontal index markers: a cross sectional study based on machine learning. https://doi.org/10.1186/s12884-026-08955-z
MLA
al, İsa Temur et. "Prediction of preterm and low birth weight risk using a physiology based artificial neural network integrating hematological, dental, and periodontal index markers: a cross sectional study based on machine learning." 2026. https://doi.org/10.1186/s12884-026-08955-z.
Chicago
al, İsa Temur et. 2026. "Prediction of preterm and low birth weight risk using a physiology based artificial neural network integrating hematological, dental, and periodontal index markers: a cross sectional study based on machine learning.". https://doi.org/10.1186/s12884-026-08955-z.
Harvard
al, İ. T. E. 2026, Prediction of preterm and low birth weight risk using a physiology based artificial neural network integrating hematological, dental, and periodontal index markers: a cross sectional study based on machine learning, BMC, available at: https://doi.org/10.1186/s12884-026-08955-z [Accessed 28 Jun. 2026].
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- Título
- Prediction of preterm and low birth weight risk using a physiology based artificial neural network integrating hematological, dental, and periodontal index markers: a cross sectional study based on machine learning
- Autor / colaboradores
- İsa Temur et al
- Editorial
- BMC
- Año de publicación
- 2026
- ISSN
- 1471-2393
- ISSN
- 1471-2393
- Idioma
- eng
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