Towards deep phenotyping pregnancy: a systematic review on artificial intelligence and machine learning methods to improve pregnancy outcomes
暂无分享,去创建一个
[1] A. Zeymo,et al. Family planning and contraception use in transgender men. , 2018, Contraception.
[2] O. Christiansen,et al. New insights into mechanisms behind miscarriage , 2013, BMC Medicine.
[3] L. Devoe,et al. Predicting the duration of the first stage of spontaneous labor using a neural network. , 1996, The Journal of maternal-fetal medicine.
[4] Peace Ossom Williamson,et al. Exploring PubMed as a reliable resource for scholarly communications services , 2019, Journal of the Medical Library Association : JMLA.
[5] Chang Wen Chen,et al. A novel algorithm for computer-assisted measurement of cervical length from transvaginal ultrasound images , 2004, IEEE Transactions on Information Technology in Biomedicine.
[6] Gari D Clifford,et al. An mHealth monitoring system for traditional birth attendant-led antenatal risk assessment in rural Guatemala , 2016, Journal of medical engineering & technology.
[7] Rodica Strungaru,et al. Fetal ECG extraction during labor using an adaptive maternal beat subtraction technique , 2007, Biomedizinische Technik. Biomedical engineering.
[8] A. Rajkovic,et al. High resolution non‐invasive detection of a fetal microdeletion using the GCREM algorithm , 2014, Prenatal diagnosis.
[9] Dina Demner-Fushman,et al. Automated classification of eligibility criteria in clinical trials to facilitate patient-trial matching for specific patient populations , 2017, J. Am. Medical Informatics Assoc..
[10] P. Petignat,et al. Usability and feasibility of a mobile health system to provide comprehensive antenatal care in low-income countries: PANDA mHealth pilot study in Madagascar , 2017, Journal of telemedicine and telecare.
[11] M. O’Hara,et al. Postpartum depression: current status and future directions. , 2013, Annual review of clinical psychology.
[12] Plácido Rogério Pinheiro,et al. Heterogeneous Methodology to Support the Early Diagnosis of Gestational Diabetes , 2019, IEEE Access.
[13] C. Schizas,et al. Two‐stage approach for risk estimation of fetal trisomy 21 and other aneuploidies using computational intelligence systems , 2018, Ultrasound in obstetrics & gynecology : the official journal of the International Society of Ultrasound in Obstetrics and Gynecology.
[14] Valery V. Korotaev,et al. Averaged one-dependence estimators on edge devices for smart pregnancy data analysis , 2019, Comput. Electr. Eng..
[15] Jeannette R. Ickovics,et al. Expect With Me: development and evaluation design for an innovative model of group prenatal care to improve perinatal outcomes , 2017, BMC Pregnancy and Childbirth.
[16] G. Burton,et al. The placenta: a multifaceted, transient organ , 2015, Philosophical Transactions of the Royal Society B: Biological Sciences.
[17] Gema García-Sáez,et al. A web-based clinical decision support system for gestational diabetes: Automatic diet prescription and detection of insulin needs , 2017, Int. J. Medical Informatics.
[18] H. Andersen,et al. Prediction of risk for preterm delivery by ultrasonographic measurement of cervical length. , 1990, American journal of obstetrics and gynecology.
[19] Christos Schizas,et al. Intelligent Noninvasive Diagnosis of Aneuploidy: Raw Values and Highly Imbalanced Dataset , 2017, IEEE Journal of Biomedical and Health Informatics.
[20] Ki Hoon Ahn,et al. Artificial Neural Network Analysis of Spontaneous Preterm Labor and Birth and Its Major Determinants , 2019, Journal of Korean medical science.
[21] Alexander A. Morgan,et al. Integrating multiple ‘omics’ analyses identifies serological protein biomarkers for preeclampsia , 2013, BMC Medicine.
[22] Thomas B Knudsen,et al. Integrative database management for mouse development: systems and concepts. , 2007, Birth defects research. Part C, Embryo today : reviews.
[23] Age K. Smilde,et al. Principal Component Analysis , 2003, Encyclopedia of Machine Learning.
[24] Yu Sun,et al. A System for Counting Fetal and Maternal Red Blood Cells , 2014, IEEE Transactions on Biomedical Engineering.
[25] Alaa Tharwat,et al. Independent component analysis: An introduction , 2020, Applied Computing and Informatics.
[26] J. Capra,et al. Genome-wide maps of distal gene regulatory enhancers active in the human placenta , 2018, PloS one.
[27] Jorge López Puga,et al. Points of Significance: Bayes' theorem , 2015, Nature Methods.
[28] Catherine Marque,et al. Comparison of Different EHG Feature Selection Methods for the Detection of Preterm Labor , 2013, Comput. Math. Methods Medicine.
[29] K. Kagan,et al. Screening for trisomies 21, 18 and 13 by maternal age, fetal nuchal translucency, fetal heart rate, free beta-hCG and pregnancy-associated plasma protein-A. , 2008, Human reproduction.
[30] Paul Fergus,et al. Machine learning ensemble modelling to classify caesarean section and vaginal delivery types using Cardiotocography traces , 2018, Comput. Biol. Medicine.
[31] Khaled Assaleh,et al. Extraction of Fetal Electrocardiogram Using Adaptive Neuro-Fuzzy Inference Systems , 2007, IEEE Transactions on Biomedical Engineering.
[32] Enrique J. Gómez,et al. Evaluation of DIABNET, a decision support system for therapy planning in gestational diabetes , 2000, Comput. Methods Programs Biomed..
[33] M. Rigla,et al. Gestational Diabetes Management Using Smart Mobile Telemedicine , 2018, Journal of diabetes science and technology.
[34] M. D'Alton,et al. Telehealth for High-Risk Pregnancies in the Setting of the COVID-19 Pandemic , 2020, American Journal of Perinatology.
[35] F. Spinella,et al. The clinical utility of genome‐wide non invasive prenatal screening , 2017, Prenatal diagnosis.
[36] A. Hasman,et al. Contents IMIA Yearbook of Medical Informatics 2019 , 2019, Yearbook of Medical Informatics.
[37] Jennifer Sanderson,et al. Selection of the sub-noise gain level for acquisition of VOCAL data sets: a reliability study. , 2014, Ultrasound in medicine & biology.
[38] Chelsea Dobbins,et al. Prediction of Preterm Deliveries from EHG Signals Using Machine Learning , 2013, PloS one.
[39] C. Hendon,et al. Anisotropic Material Characterization of Human Cervix Tissue based on Indentation. , 2019, Journal of biomechanical engineering.
[40] Waldemar Kuczyński,et al. How much information about embryo implantation potential is included in morphokinetic data? A prediction model based on artificial neural networks and principal component analysis. , 2017, Advances in medical sciences.
[41] Anne E Carpenter,et al. Opportunities and obstacles for deep learning in biology and medicine , 2017, bioRxiv.
[42] Ehsan Kazemi,et al. Deep learning enables robust assessment and selection of human blastocysts after in vitro fertilization , 2019, npj Digital Medicine.
[43] et al.,et al. Assessment of a personalized and distributed patient guidance system , 2017, Int. J. Medical Informatics.
[44] George Hripcsak,et al. Deep phenotyping: Embracing complexity and temporality—Towards scalability, portability, and interoperability , 2020, Journal of Biomedical Informatics.
[45] Abrar E Al-Shaer,et al. Exon level machine learning analyses elucidate novel candidate miRNA targets in an avian model of fetal alcohol spectrum disorder , 2019, PLoS Comput. Biol..
[46] Sankar K. Pal,et al. Multilayer perceptron, fuzzy sets, and classification , 1992, IEEE Trans. Neural Networks.
[47] Izet Masic. Medical Informatics in a United and Healthy Europe , 2009, MIE.
[48] Marti A. Hearst,et al. SVMs—a practical consequence of learning theory , 1998 .
[49] Deniz Erdogmus,et al. Real-Time Deep Pose Estimation With Geodesic Loss for Image-to-Template Rigid Registration , 2018, IEEE Transactions on Medical Imaging.
[50] Newborn,et al. Apgar score , 2009, Radiopaedia.org.
[51] Nida Shahid,et al. Applications of artificial neural networks in health care organizational decision-making: A scoping review , 2019, PloS one.
[52] Aleksander Mendyk,et al. Artificial intelligence technology as a tool for initial GDM screening , 2004, Expert Syst. Appl..
[53] J. Friedman. Regularized Discriminant Analysis , 1989 .
[54] Lawrence D Devoe. Future perspectives in intrapartum fetal surveillance. , 2016, Best practice & research. Clinical obstetrics & gynaecology.
[55] S Comani,et al. Entropy-based automated classification of independent components separated from fMCG , 2007, Physics in medicine and biology.
[56] Motoaki Kawanabe,et al. A resampling approach to estimate the stability of one-dimensional or multidimensional independent components , 2002, IEEE Transactions on Biomedical Engineering.
[57] Theresa Dankowski,et al. Calibrating random forests for probability estimation , 2016, Statistics in medicine.
[58] Jacek M. Leski,et al. Fuzzy Analysis of Delivery Outcome Attributes for Improving the Automated Fetal State Assessment , 2016, Appl. Artif. Intell..
[59] David A. Borkholder,et al. Fetal QRS extraction from abdominal recordings via model-based signal processing and intelligent signal merging. , 2014, Physiological measurement.
[60] R. Achiron,et al. Fetal Thymus Volume Estimation by Virtual Organ Computer‐Aided Analysis in Normal Pregnancies , 2015, Journal of ultrasound in medicine : official journal of the American Institute of Ultrasound in Medicine.
[61] M S Beksaç,et al. A computerized diagnostic system for the interpretation of umbilical artery blood flow velocity waveforms. , 1996, European journal of obstetrics, gynecology, and reproductive biology.
[62] Michel F. Valstar,et al. Postnatal gestational age estimation of newborns using Small Sample Deep Learning☆ , 2019, Image Vis. Comput..
[63] Pedro Larrañaga,et al. Bayesian classification for the selection of in vitro human embryos using morphological and clinical data , 2008, Comput. Methods Programs Biomed..
[64] Joel J. P. C. Rodrigues,et al. Evolutionary radial basis function network for gestational diabetes data analytics , 2017, J. Comput. Sci..
[65] J. Ioannidis,et al. The PRISMA Statement for Reporting Systematic Reviews and Meta-Analyses of Studies That Evaluate Health Care Interventions: Explanation and Elaboration , 2009, Annals of Internal Medicine [serial online].
[66] L. Cazares,et al. The search for biomarkers of human embryo developmental potential in IVF: a comprehensive proteomic approach. , 2013, Molecular human reproduction.
[67] Maruf Pasha,et al. Survey of Machine Learning Algorithms for Disease Diagnostic , 2017 .
[68] Preliminary evaluation of an intelligent system for the management of labour. , 1994, Journal of perinatal medicine.
[69] Víctor M. Prieto,et al. Twitter: A Good Place to Detect Health Conditions , 2014, PloS one.
[70] Abdulhamit Subasi,et al. Classification of the cardiotocogram data for anticipation of fetal risks using machine learning techniques , 2015, Appl. Soft Comput..
[71] Juno Obedin-Maliver,et al. Transgender Men Who Experienced Pregnancy After Female-to-Male Gender Transitioning , 2014, Obstetrics and gynecology.
[72] Christos Schizas,et al. First Trimester Noninvasive Prenatal Diagnosis: A Computational Intelligence Approach , 2016, IEEE Journal of Biomedical and Health Informatics.
[73] Robert W Platt,et al. Machine Learning for Fetal Growth Prediction , 2017, Epidemiology.
[74] Kathleen H. Miao,et al. Cardiotocographic Diagnosis of Fetal Health based on Multiclass Morphologic Pattern Predictions using Deep Learning Classification , 2018 .
[75] P. Iftikhar,et al. Artificial Intelligence: A New Paradigm in Obstetrics and Gynecology Research and Clinical Practice , 2020, Cureus.
[76] J. Fawcett,et al. Contemporary Women’s Adaptation to Motherhood , 2013, Nursing science quarterly.
[77] Cheng Gao,et al. Deep learning predicts extreme preterm birth from electronic health records , 2019, J. Biomed. Informatics.
[78] Joel J. P. C. Rodrigues,et al. Neuro‐fuzzy model for HELLP syndrome prediction in mobile cloud computing environments , 2018, Concurr. Comput. Pract. Exp..
[79] Walter Plasencia,et al. Fully automated, real-time 3D ultrasound segmentation to estimate first trimester placental volume using deep learning. , 2018, JCI insight.
[80] T. Bjorndahl,et al. Artificial intelligence and amniotic fluid multiomics: prediction of perinatal outcome in asymptomatic women with short cervix , 2019, Ultrasound in obstetrics & gynecology : the official journal of the International Society of Ultrasound in Obstetrics and Gynecology.
[81] K. Greene. Intelligent fetal heart rate computer systems in intrapartum surveillance. , 1996, Current opinion in obstetrics & gynecology.
[82] José Guilherme Cecatti,et al. Mobile technology in health (mHealth) and antenatal care-Searching for apps and available solutions: A systematic review , 2019, Int. J. Medical Informatics.
[83] James M. Keller,et al. A fuzzy K-nearest neighbor algorithm , 1985, IEEE Transactions on Systems, Man, and Cybernetics.
[84] S Comani,et al. A method for the automatic reconstruction of fetal cardiac signals from magnetocardiographic recordings , 2005, Physics in medicine and biology.
[85] Ilker Etikan,et al. Prediction methods for babies' birth weight using linear and nonlinear regression analysis. , 2005, Technology and health care : official journal of the European Society for Engineering and Medicine.
[86] Mohaned Shilaih,et al. Wearable Sensors Reveal Menses-Driven Changes in Physiology and Enable Prediction of the Fertile Window: Observational Study , 2019, Journal of medical Internet research.
[87] M S Beksaç,et al. An automated intelligent diagnostic system for the interpretation of umbilical artery Doppler velocimetry. , 1996, European journal of radiology.
[88] E. Gómez,et al. DIABNET: a qualitative model-based advisory system for therapy planning in gestational diabetes. , 1996, Medical informatics = Medecine et informatique.
[89] Dimitrios I. Fotiadis,et al. An Automated Methodology for Fetal Heart Rate Extraction From the Abdominal Electrocardiogram , 2007, IEEE Transactions on Information Technology in Biomedicine.
[90] Jenni K. Ranta,et al. Screening and outcome of chromosomal abnormalities other than trisomy 21 in Northern Finland , 2011, Acta obstetricia et gynecologica Scandinavica.
[91] Ping Chen,et al. Fetal Weight Estimation Using the Evolutionary Fuzzy Support Vector Regression for Low-Birth-Weight Fetuses , 2009, IEEE Transactions on Information Technology in Biomedicine.
[92] Matthias Eberl,et al. Using artificial intelligence to reduce diagnostic workload without compromising detection of urinary tract infections , 2019, BMC Medical Informatics and Decision Making.
[93] K. Borgwardt,et al. Machine Learning in Medicine , 2015, Mach. Learn. under Resour. Constraints Vol. 3.
[94] L. Billeci,et al. An efficient unsupervised fetal QRS complex detection from abdominal maternal ECG , 2014, Physiological measurement.
[95] Reza Ferdousi,et al. A Review of Machine Learning Approaches in Assisted Reproductive Technologies , 2019, Acta informatica medica : AIM : journal of the Society for Medical Informatics of Bosnia & Herzegovina : casopis Drustva za medicinsku informatiku BiH.
[96] Yiyao Ye-Lin,et al. Prediction of labor onset type: Spontaneous vs induced; role of electrohysterography? , 2017, Comput. Methods Programs Biomed..
[97] Jerzy W. Grzymala-Busse,et al. Machine learning for an expert system to predict preterm birth risk. , 1994, Journal of the American Medical Informatics Association : JAMIA.
[98] Declan Devane,et al. Expert systems for fetal assessment in labour , 2015 .
[99] A. Bener,et al. Predictive Modeling of Implantation Outcome in an In Vitro Fertilization Setting , 2015, Medical decision making : an international journal of the Society for Medical Decision Making.
[100] Kemal Leblebicioglu,et al. Computerized prediction system for the route of delivery (vaginal birth versus cesarean section) , 2018, Journal of perinatal medicine.
[101] Pradeep Kumar,et al. CAD for Detection of Fetal Electrocardiogram by using Wavelets and Neuro-Fuzzy Systems , 2016 .
[102] L. Stanley James,et al. Evaluation of the newborn infant; second report. , 1958 .
[103] Xianghua Fu,et al. Prediction of fetal weight at varying gestational age in the absence of ultrasound examination using ensemble learning , 2020, Artif. Intell. Medicine.
[104] P. McCartney. Computer analysis of the fetal heart rate. , 2000, Journal of obstetric, gynecologic, and neonatal nursing : JOGNN.
[105] Eduardo Tejera,et al. Artificial neural network for normal, hypertensive, and preeclamptic pregnancy classification using maternal heart rate variability indexes , 2011, The journal of maternal-fetal & neonatal medicine : the official journal of the European Association of Perinatal Medicine, the Federation of Asia and Oceania Perinatal Societies, the International Society of Perinatal Obstetricians.
[106] L K Woolery. Clinical knowledge base development for preterm-birth risk assessment. , 1994, Applied nursing research : ANR.
[107] Abril Corona-Figueroa. A portable prototype for diagnosing fetal arrhythmia , 2019, Informatics in Medicine Unlocked.
[108] J. Troisi,et al. A metabolomics-based approach for non-invasive screening of fetal central nervous system anomalies , 2018, Metabolomics.
[109] Nicolò Pini,et al. Integrating machine learning techniques and physiology based heart rate features for antepartum fetal monitoring , 2020, Comput. Methods Programs Biomed..
[110] R. Romero,et al. Fetal Intelligent Navigation Echocardiography (FINE): a novel method for rapid, simple, and automatic examination of the fetal heart , 2013, Ultrasound in obstetrics & gynecology : the official journal of the International Society of Ultrasound in Obstetrics and Gynecology.
[111] Yanbo Zhang,et al. Predicting congenital heart defects: A comparison of three data mining methods , 2017, PloS one.
[112] M. Borszewska-Kornacka,et al. Practical application and prognostic value of the expanded Apgar score , 2013 .
[113] H. Murphy. Managing Diabetes in Pregnancy before, during and after COVID-19. , 2020, Diabetes technology & therapeutics.
[114] Dong Ni,et al. Discriminative Learning for Automatic Staging of Placental Maturity via Multi-layer Fisher Vector , 2015, Scientific reports.
[115] Ersen Yilmaz,et al. Determination of Fetal State from Cardiotocogram Using LS-SVM with Particle Swarm Optimization and Binary Decision Tree , 2013, Comput. Math. Methods Medicine.
[116] A. Meltzer,et al. Testing the Feasibility of Remote Patient Monitoring in Prenatal Care Using a Mobile App and Connected Devices: A Prospective Observational Trial , 2016, JMIR research protocols.
[117] P. Noble,et al. Artificial intelligence assistance for fetal head biometry: Assessment of automated measurement software. , 2018, Diagnostic and interventional imaging.
[118] Y. Palmeiro,et al. Etiopathogenesis, prediction, and prevention of preeclampsia , 2016, Hypertension in pregnancy.
[119] Ludomir Stefańczyk,et al. Parameter set for computer-assisted texture analysis of fetal brain , 2016, BMC Research Notes.
[120] C. Kyobutungi,et al. The role of a decision-support smartphone application in enhancing community health volunteers’ effectiveness to improve maternal and newborn outcomes in Nairobi, Kenya: quasi-experimental research protocol , 2017, BMJ Open.
[121] Catherine Marque,et al. Ridge Extraction From the Time–frequency Representation (TFR) of Signals Based on an Image Processing Approach: Application to the Analysis of Uterine Electromyogram AR TFR , 2008, IEEE Transactions on Biomedical Engineering.
[122] Guy A Dumont,et al. Usability and Feasibility of PIERS on the Move: An mHealth App for Pre-Eclampsia Triage , 2015, JMIR mHealth and uHealth.
[123] Angela Joerin,et al. Expanding Access to Depression Treatment in Kenya Through Automated Psychological Support: Protocol for a Single-Case Experimental Design Pilot Study , 2019, JMIR research protocols.
[124] V. Renganathan,et al. Overview of artificial neural network models in the biomedical domain. , 2019, Bratislavske lekarske listy.
[125] J. Obedin-Maliver,et al. From erasure to opportunity: a qualitative study of the experiences of transgender men around pregnancy and recommendations for providers , 2017, BMC Pregnancy and Childbirth.
[126] Diana Borsa,et al. Automatic Identification of Web-Based Risk Markers for Health Events , 2015, Journal of medical Internet research.
[127] Akhan Akbulut,et al. Fetal health status prediction based on maternal clinical history using machine learning techniques , 2018, Comput. Methods Programs Biomed..
[128] Ben Bellows,et al. "What is the best method of family planning for me?": a text mining analysis of messages between users and agents of a digital health service in Kenya , 2019, Gates open research.
[129] H Asadi,et al. eDoctor: machine learning and the future of medicine , 2018, Journal of internal medicine.
[130] Ari Z. Klein,et al. Social media mining for birth defects research: A rule-based, bootstrapping approach to collecting data for rare health-related events on Twitter , 2018, J. Biomed. Informatics.
[131] Lili Chen,et al. Discriminating Pregnancy and Labour in Electrohysterogram by Sample Entropy and Support Vector Machine , 2017 .
[132] Anil K. Jain. Data clustering: 50 years beyond K-means , 2010, Pattern Recognit. Lett..
[133] Hubert Preissl,et al. Detection of Uterine MMG Contractions Using a Multiple Change Point Estimator and the K-Means Cluster Algorithm , 2008, IEEE Transactions on Biomedical Engineering.
[134] Joy Noel-Weiss,et al. Transmasculine individuals’ experiences with lactation, chestfeeding, and gender identity: a qualitative study , 2016, BMC Pregnancy and Childbirth.
[135] Helio J. C. Barbosa,et al. NICeSim: An open-source simulator based on machine learning techniques to support medical research on prenatal and perinatal care decision making , 2014, Artif. Intell. Medicine.
[136] Jianfeng Yang,et al. Improving the calling of non-invasive prenatal testing on 13-/18-/21-trisomy by support vector machine discrimination , 2017, bioRxiv.
[137] Dorothea Heiss-Czedik,et al. An Introduction to Genetic Algorithms. , 1997, Artificial Life.
[138] J. Balayla,et al. Use of artificial intelligence (AI) in the interpretation of intrapartum fetal heart rate (FHR) tracings: a systematic review and meta-analysis , 2019, Archives of Gynecology and Obstetrics.
[139] C. Şen. Preterm labor and preterm birth , 2017, Journal of perinatal medicine.
[140] J. Sterling,et al. Fertility preservation options for transgender individuals , 2020, Translational andrology and urology.
[141] Nizar Bouguila,et al. Classification of caesarean section and normal vaginal deliveries using foetal heart rate signals and advanced machine learning algorithms , 2017, Biomedical engineering online.
[142] S. Aydemir,et al. The Relationship Between Maternal Self-confidence and Postpartum Depression in Primipara Mothers: A Follow-Up Study , 2020, Community mental health journal.
[143] J. Alison Noble,et al. Learning-based prediction of gestational age from ultrasound images of the fetal brain , 2015, Medical Image Anal..
[144] J. E. Arias,et al. A Perinatal Monitoring Display Based on the Fetal Topogram , 1986, IEEE Transactions on Biomedical Engineering.
[145] H. Cuckle,et al. Performance adjusted risks: a method to improve the quality of algorithm performance while allowing all to play , 2011, Prenatal diagnosis.
[146] Sung-Bae Cho,et al. Radial basis function neural networks: a topical state-of-the-art survey , 2016, Open Comput. Sci..
[147] Cameron D Skinner,et al. Early prediction of macrosomia based on an analysis of second trimester amniotic fluid by capillary electrophoresis. , 2012, Biomarkers in medicine.
[148] E. Marczylo,et al. Variation in Stability of Endogenous Reference Genes in Fallopian Tubes and Endometrium from Healthy and Ectopic Pregnant Women , 2012, International journal of molecular sciences.
[149] Yiye Zhang,et al. Using Electronic Health Records and Machine Learning to Predict Postpartum Depression , 2019, MedInfo.
[150] Peter N. Robinson,et al. Deep phenotyping for precision medicine , 2012, Human mutation.
[151] Tapio Pahikkala,et al. Evaluation of machine learning algorithms for improved risk assessment for Down's syndrome , 2018, Comput. Biol. Medicine.
[152] D. Tran,et al. Deep learning as a predictive tool for fetal heart pregnancy following time-lapse incubation and blastocyst transfer , 2019, Human reproduction.
[153] V. Apgar. A proposal for a new method of evaluation of the newborn infant. , 1953, Current researches in anesthesia & analgesia.
[154] J. Obedin-Maliver,et al. Transgender men and pregnancy , 2015, Obstetric medicine.
[155] Vijayaprasad Gopichandran,et al. Continuum of Care Services for Maternal and Child Health using mobile technology – a health system strengthening strategy in low and middle income countries , 2016, BMC Medical Informatics and Decision Making.
[156] L Chik,et al. A prototype system for perinatal knowledge engineering using an artificial intelligence tool , 1988, Journal of perinatal medicine.
[157] Polina Golland,et al. Spatiotemporal alignment of in utero BOLD‐MRI series , 2017, Journal of magnetic resonance imaging : JMRI.
[158] Mustafa Suleyman,et al. Key challenges for delivering clinical impact with artificial intelligence , 2019, BMC Medicine.
[159] Fei Wang,et al. Deep learning for healthcare: review, opportunities and challenges , 2018, Briefings Bioinform..