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1.
J Healthc Inform Res ; 8(2): 181-205, 2024 Jun.
Artículo en Inglés | MEDLINE | ID: mdl-38681759

RESUMEN

As machine learning (ML) usage becomes more popular in the healthcare sector, there are also increasing concerns about potential biases and risks such as privacy. One countermeasure is to use federated learning (FL) to support collaborative learning without the need for patient data sharing across different organizations. However, the inherent heterogeneity of data distributions among participating FL parties poses challenges for exploring group fairness in FL. While personalization within FL can handle performance degradation caused by data heterogeneity, its influence on group fairness is not fully investigated. Therefore, the primary focus of this study is to rigorously assess the impact of personalized FL on group fairness in the healthcare domain, offering a comprehensive understanding of how personalized FL affects group fairness in clinical outcomes. We conduct an empirical analysis using two prominent real-world Electronic Health Records (EHR) datasets, namely eICU and MIMIC-IV. Our methodology involves a thorough comparison between personalized FL and two baselines: standalone training, where models are developed independently without FL collaboration, and standard FL, which aims to learn a global model via the FedAvg algorithm. We adopt Ditto as our personalized FL approach, which enables each client in FL to develop its own personalized model through multi-task learning. Our assessment is achieved through a series of evaluations, comparing the predictive performance (i.e., AUROC and AUPRC) and fairness gaps (i.e., EOPP, EOD, and DP) of these methods. Personalized FL demonstrates superior predictive accuracy and fairness over standalone training across both datasets. Nevertheless, in comparison with standard FL, personalized FL shows improved predictive accuracy but does not consistently offer better fairness outcomes. For instance, in the 24-h in-hospital mortality prediction task, personalized FL achieves an average EOD of 27.4% across racial groups in the eICU dataset and 47.8% in MIMIC-IV. In comparison, standard FL records a better EOD of 26.2% for eICU and 42.0% for MIMIC-IV, while standalone training yields significantly worse EOD of 69.4% and 54.7% on these datasets, respectively. Our analysis reveals that personalized FL has the potential to enhance fairness in comparison to standalone training, yet it does not consistently ensure fairness improvements compared to standard FL. Our findings also show that while personalization can improve fairness for more biased hospitals (i.e., hospitals having larger fairness gaps in standalone training), it can exacerbate fairness issues for less biased ones. These insights suggest that the integration of personalized FL with additional strategic designs could be key to simultaneously boosting prediction accuracy and reducing fairness disparities. The findings and opportunities outlined in this paper can inform the research agenda for future studies, to overcome the limitations and further advance health equity research.

2.
Medicine (Baltimore) ; 102(39): e34659, 2023 Sep 29.
Artículo en Inglés | MEDLINE | ID: mdl-37773790

RESUMEN

RATIONALE: Non-cirrhotic portal hypertension (NCPH) is characterized by the absence of cirrhotic modification of the liver and the patency of the portal and hepatic veins. When compared to the general population, NCPH is associated with an increased risk of maternal and perinatal morbidity and mortality during pregnancy. NCPH was present in the majority (74.1%) of pregnant women with portal hypertension. One (25%) out of every 4 pregnancies was complicated by variceal hemorrhage while pregnant. So far, there is still no consensus in the world about the treatment of this rare condition. PATIENT CONCERNS: We have specifically illustrated a rare instance where the patient was diagnosed with NCPH and hypersplenism at the age of 8 and experienced a 3 L massive hemorrhage during labor induction as a result of her first pregnancy loss due to hypertension. DIAGNOSES AND INTERVENTIONS: The diagnosis of threatened preterm labor with cervical dilatation, gestational diabetes mellitus, massive splenomegaly with hypersplenism, portal vein hypertension, and parenchymal damage of kidney with impaired renal function led to the cesarean delivery of the second pregnancy at 29+3 weeks gestation without splenectomy after been evaluated by multispecialty team. OUTCOMES: She and her child were both in generally good condition 3 months after the operation. LESSONS: Preconception counseling, ongoing follow-up, and monitoring are crucial in pregnant women with NCPH. A multidisciplinary team approach, with timely intervention and intensive monitoring, can help achieve optimal maternal-perinatal outcomes in pregnancies complicated with portal hypertension. Our case provided a successful treatment, but more guidelines for the management of NCPH are needed.


Asunto(s)
Aborto Espontáneo , Várices Esofágicas y Gástricas , Hiperesplenismo , Hipertensión Portal , Hipertensión , Hemorragia Posparto , Femenino , Humanos , Recién Nacido , Embarazo , Várices Esofágicas y Gástricas/complicaciones , Hemorragia Gastrointestinal/etiología , Hiperesplenismo/etiología , Hipertensión/complicaciones , Hipertensión Portal/complicaciones , Hemorragia Posparto/etiología , Hemorragia Posparto/terapia
3.
BMC Pregnancy Childbirth ; 23(1): 631, 2023 Sep 01.
Artículo en Inglés | MEDLINE | ID: mdl-37658306

RESUMEN

BACKGROUND: Preeclampsia complicated with hypofibrinogenemia is a rare disorder. We report two cases of severe preeclampsia complicated with hypofibrinogenemia followed by postpartum haemorrhage (PPH). CASE: Two women diagnosed as preeclampsia and hypofibrinogenemia developed severe PPH after undergoing Cesarean sections. Besides supplement with fibrinogen concentrate and supportive treatment, the second patient got administration of heparin after delivery and bleeding was stopped. The haemorrhage in case 1 didn't disappear until an hysterectomy. The two patients both recovered and were discharged soon. CONCLUSIONS: Severe preeclampsia patients with hypofibrinogenemia could suffer PPH. It's necessary to detect and master coagulation function. Heparin could be considered to balance hypercoagulation and hypocoagulation to avoid catastrophic haemorrhage and hysterectomy.


Asunto(s)
Afibrinogenemia , Hemorragia Posparto , Preeclampsia , Embarazo , Humanos , Femenino , Afibrinogenemia/complicaciones , Fibrinógeno/uso terapéutico , Hemorragia Posparto/etiología , Hemorragia Posparto/terapia , Heparina
4.
J Med Internet Res ; 25: e43006, 2023 05 01.
Artículo en Inglés | MEDLINE | ID: mdl-37126398

RESUMEN

BACKGROUND: The proliferation of mobile health (mHealth) applications is partly driven by the advancements in sensing and communication technologies, as well as the integration of artificial intelligence techniques. Data collected from mHealth applications, for example, on sensor devices carried by patients, can be mined and analyzed using artificial intelligence-based solutions to facilitate remote and (near) real-time decision-making in health care settings. However, such data often sit in data silos, and patients are often concerned about the privacy implications of sharing their raw data. Federated learning (FL) is a potential solution, as it allows multiple data owners to collaboratively train a machine learning model without requiring access to each other's raw data. OBJECTIVE: The goal of this scoping review is to gain an understanding of FL and its potential in dealing with sensitive and heterogeneous data in mHealth applications. Through this review, various stakeholders, such as health care providers, practitioners, and policy makers, can gain insight into the limitations and challenges associated with using FL in mHealth and make informed decisions when considering implementing FL-based solutions. METHODS: We conducted a scoping review following the guidelines of PRISMA-ScR (Preferred Reporting Items for Systematic Reviews and Meta-Analyses Extension for Scoping Reviews). We searched 7 commonly used databases. The included studies were analyzed and summarized to identify the possible real-world applications and associated challenges of using FL in mHealth settings. RESULTS: A total of 1095 articles were retrieved during the database search, and 26 articles that met the inclusion criteria were included in the review. The analysis of these articles revealed 2 main application areas for FL in mHealth, that is, remote monitoring and diagnostic and treatment support. More specifically, FL was found to be commonly used for monitoring self-care ability, health status, and disease progression, as well as in diagnosis and treatment support of diseases. The review also identified several challenges (eg, expensive communication, statistical heterogeneity, and system heterogeneity) and potential solutions (eg, compression schemes, model personalization, and active sampling). CONCLUSIONS: This scoping review has highlighted the potential of FL as a privacy-preserving approach in mHealth applications and identified the technical limitations associated with its use. The challenges and opportunities outlined in this review can inform the research agenda for future studies in this field, to overcome these limitations and further advance the use of FL in mHealth.


Asunto(s)
Aplicaciones Móviles , Telemedicina , Humanos , Personal Administrativo , Inteligencia Artificial , Comunicación , Bases de Datos Factuales , Progresión de la Enfermedad
5.
JMIR Mhealth Uhealth ; 10(6): e35053, 2022 06 09.
Artículo en Inglés | MEDLINE | ID: mdl-35679107

RESUMEN

BACKGROUND: Artificial intelligence (AI) has revolutionized health care delivery in recent years. There is an increase in research for advanced AI techniques, such as deep learning, to build predictive models for the early detection of diseases. Such predictive models leverage mobile health (mHealth) data from wearable sensors and smartphones to discover novel ways for detecting and managing chronic diseases and mental health conditions. OBJECTIVE: Currently, little is known about the use of AI-powered mHealth (AIM) settings. Therefore, this scoping review aims to map current research on the emerging use of AIM for managing diseases and promoting health. Our objective is to synthesize research in AIM models that have increasingly been used for health care delivery in the last 2 years. METHODS: Using Arksey and O'Malley's 5-point framework for conducting scoping reviews, we reviewed AIM literature from the past 2 years in the fields of biomedical technology, AI, and information systems. We searched 3 databases, PubsOnline at INFORMS, e-journal archive at MIS Quarterly, and Association for Computing Machinery (ACM) Digital Library using keywords such as "mobile healthcare," "wearable medical sensors," "smartphones", and "AI." We included AIM articles and excluded technical articles focused only on AI models. We also used the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) technique for identifying articles that represent a comprehensive view of current research in the AIM domain. RESULTS: We screened 108 articles focusing on developing AIM models for ensuring better health care delivery, detecting diseases early, and diagnosing chronic health conditions, and 37 articles were eligible for inclusion, with 31 of the 37 articles being published last year (76%). Of the included articles, 9 studied AI models to detect serious mental health issues, such as depression and suicidal tendencies, and chronic health conditions, such as sleep apnea and diabetes. Several articles discussed the application of AIM models for remote patient monitoring and disease management. The considered primary health concerns belonged to 3 categories: mental health, physical health, and health promotion and wellness. Moreover, 14 of the 37 articles used AIM applications to research physical health, representing 38% of the total studies. Finally, 28 out of the 37 (76%) studies used proprietary data sets rather than public data sets. We found a lack of research in addressing chronic mental health issues and a lack of publicly available data sets for AIM research. CONCLUSIONS: The application of AIM models for disease detection and management is a growing research domain. These models provide accurate predictions for enabling preventive care on a broader scale in the health care domain. Given the ever-increasing need for remote disease management during the pandemic, recent AI techniques, such as federated learning and explainable AI, can act as a catalyst for increasing the adoption of AIM and enabling secure data sharing across the health care industry.


Asunto(s)
Inteligencia Artificial , Telemedicina , Atención a la Salud , Humanos , Pandemias , Teléfono Inteligente , Telemedicina/métodos
6.
Artículo en Inglés | MEDLINE | ID: mdl-26761861

RESUMEN

Advances in biomedical sensors and mobile communication technologies have fostered the rapid growth of mobile health (mHealth) applications in the past years. Users generate a high volume of biomedical data during health monitoring, which can be used by the mHealth server for training predictive models for disease diagnosis and treatment. However, the biomedical sensing data raise serious privacy concerns because they reveal sensitive information such as health status and lifestyles of the sensed subjects. This paper proposes and experimentally studies a scheme that keeps the training samples private while enabling accurate construction of predictive models. We specifically consider logistic regression models which are widely used for predicting dichotomous outcomes in healthcare, and decompose the logistic regression problem into small subproblems over two types of distributed sensing data, i.e., horizontally partitioned data and vertically partitioned data. The subproblems are solved using individual private data, and thus mHealth users can keep their private data locally and only upload (encrypted) intermediate results to the mHealth server for model training. Experimental results based on real datasets show that our scheme is highly efficient and scalable to a large number of mHealth users.


Asunto(s)
Seguridad Computacional , Registros Electrónicos de Salud , Telemedicina , Algoritmos , Modelos Logísticos
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