Salud Digital 4.0. Aplicación de la Inteligencia Artificial y Big Data en la prevención, diagnóstico y gestión sanitaria.
Keywords:
Salud digital, inteligencia artificial, Big Data, gestión sanitariaSynopsis
Este libro analiza la Salud Digital 4.0 como un paradigma estratégico para fortalecer la prevención, el diagnóstico y la gestión sanitaria mediante inteligencia artificial, Big Data, analítica predictiva e interoperabilidad clínica. Desde una perspectiva integral, se examina la evolución de los sistemas sanitarios hacia modelos más inteligentes, seguros y sostenibles, destacando el papel de la tecnología en la toma de decisiones clínicas, la optimización hospitalaria, la educación médica y la humanización del cuidado. La obra también aborda los desafíos éticos, regulatorios y financieros asociados al uso de datos sanitarios, incluyendo privacidad, sesgos algorítmicos, trazabilidad y protección del paciente. Finalmente, se reflexiona sobre la transformación digital en América Latina, considerando sus avances, brechas y oportunidades institucionales. Se concluye que la salud digital solo alcanza verdadero valor cuando articula innovación tecnológica, responsabilidad ética y compromiso humano con la calidad asistencial.
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