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Machine-learning algorithm incorporating capacitated sperm intracellular pH predicts conventional in vitro fertilization success in normospermic patients. Fertil Steril 2021 Apr;115(4):930-939

Date

01/20/2021

Pubmed ID

33461755

Pubmed Central ID

PMC9110269

DOI

10.1016/j.fertnstert.2020.10.038

Scopus ID

2-s2.0-85099545177 (requires institutional sign-in at Scopus site)   18 Citations

Abstract

OBJECTIVE: To measure human sperm intracellular pH (pHi) and develop a machine-learning algorithm to predict successful conventional in vitro fertilization (IVF) in normospermic patients.

DESIGN: Spermatozoa from 76 IVF patients were capacitated in vitro. Flow cytometry was used to measure sperm pHi, and computer-assisted semen analysis was used to measure hyperactivated motility. A gradient-boosted machine-learning algorithm was trained on clinical data and sperm pHi and membrane potential from 58 patients to predict successful conventional IVF, defined as a fertilization ratio (number of fertilized oocytes [2 pronuclei]/number of mature oocytes) greater than 0.66. The algorithm was validated on an independent set of data from 18 patients.

SETTING: Academic medical center.

PATIENT(S): Normospermic men undergoing IVF. Patients were excluded if they used frozen sperm, had known male factor infertility, or used intracytoplasmic sperm injection only.

INTERVENTION(S): None.

MAIN OUTCOME MEASURE(S): Successful conventional IVF.

RESULT(S): Sperm pHi positively correlated with hyperactivated motility and with conventional IVF ratio (n = 76) but not with intracytoplasmic sperm injection fertilization ratio (n = 38). In receiver operating curve analysis of data from the test set (n = 58), the machine-learning algorithm predicted successful conventional IVF with a mean accuracy of 0.72 (n = 18), a mean area under the curve of 0.81, a mean sensitivity of 0.65, and a mean specificity of 0.80.

CONCLUSION(S): Sperm pHi correlates with conventional fertilization outcomes in normospermic patients undergoing IVF. A machine-learning algorithm can use clinical parameters and markers of capacitation to accurately predict successful fertilization in normospermic men undergoing conventional IVF.

Author List

Gunderson SJ, Puga Molina LC, Spies N, Balestrini PA, Buffone MG, Jungheim ES, Riley J, Santi CM

Author

Stephanie Gunderson MD Assistant Professor in the Obstetrics and Gynecology department at Medical College of Wisconsin




MESH terms used to index this publication - Major topics in bold

Adult
Algorithms
Female
Fertilization in Vitro
Flow Cytometry
Forecasting
Humans
Hydrogen-Ion Concentration
Infertility, Male
Intracellular Fluid
Machine Learning
Male
Semen Analysis
Sperm Capacitation