Machine learning‐enhanced noninvasive prenatal testing of monogenic disorders

Author:

Liscovitch‐Brauer Noa1ORCID,Mesika Ravit1,Rabinowitz Tom12,Volkov Hadas123,Grad Meitar2,Matar Reut Tomashov4,Basel‐Salmon Lina245,Tadmor Oren1,Beker Amir1,Shomron Noam123

Affiliation:

1. Identifai‐Genetics Ltd. Tel Aviv Israel

2. Faculty of Medicine Tel Aviv University Tel Aviv Israel

3. Edmond J Safra Center for Bioinformatics Tel Aviv University Tel Aviv Israel

4. Raphael Recanati Genetic Institute Rabin Medical Center Beilinson Hospital Petah Tikva Israel

5. Felsenstein Medical Research Center Tel‐Aviv University Tel‐Aviv Israel

Abstract

AbstractObjectiveSingle‐nucleotide variants (SNVs) are of great significance in prenatal diagnosis as they are the leading cause of inherited single‐gene disorders (SGDs). Identifying SNVs in a non‐invasive prenatal screening (NIPS) scenario is particularly challenging for maternally inherited SNVs. We present an improved method to predict inherited SNVs from maternal or paternal origin in a genome‐wide manner.MethodsWe performed SNV‐NIPS based on the combination of fragments of cell free DNA (cfDNA) features, Bayesian inference and a machine‐learning (ML) prediction refinement step using random forest (RF) classifiers trained on millions of non‐pathogenic variants. We next evaluate the real‐world performance of our refined method in a clinical setting by testing our models on 16 families with singleton pregnancies and varying fetal fraction (FF) levels, and validate the results over millions of inherited variants in each fetus.ResultsThe average area under the ROC curve (AUC) values are 0.996 over all families for paternally inherited variants, 0.81 for the challenging maternally inherited variants, 0.86 for homozygous biallelic variants and 0.95 for compound heterozygous variants. Discriminative AUCs were achieved even in families with a low FF. We further investigate the performance of our method in correctly predicting SNVs in coding regions of clinically relevant genes and demonstrate significantly improved AUCs in these regions. Finally, we focus on the pathogenic variants in our cohort and show that our method correctly predicts if the fetus is unaffected or affected in all (10/10, 100%) of the families containing a pathogenic SNV.ConclusionsOverall, we demonstrate our ability to perform genome‐wide NIPS for maternal and homozygous biallelic variants and showcase the utility of our method in a clinical setting.

Publisher

Wiley

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