Recent research featured in Neuroscience News highlights deep learning´s expanding role at the intersection of neuroscience, psychology, and medicine. The brain´s ventral tegmental area (VTA), which steers motivation and learning via dopamine, has been shown to track not only the value but also the expected timing of rewards. Scientists now report that this brain region processes reward prediction at multiple time scales, opening new paths for understanding complex behaviors.
Artificial intelligence’s capabilities are being put to the test in diverse ways. One study demonstrates that artificial intelligence can craft internet memes rated as humorous and shareable as those made by humans, though the sharpest jokes still belong to people. In clinical neurology, researchers have developed a deep learning-based diagnostic tool capable of detecting eye movement disorders such as nystagmus through smartphone video and cloud platforms, a step forward from costly and cumbersome traditional equipment. Meanwhile, advancements in adaptive brain modeling harness artificial intelligence to simulate and decode individual brain dynamics, offering hope for objective diagnoses in neuropsychiatric care, where reliable neuroimaging biomarkers are lacking.
Mental health support is also a focus. Analysts examined the reliability of large language model-powered chatbots when addressing side effects of psychiatric medication. While these chatbots can mirror the reassuring tone of mental health professionals, the study found shortfalls in their ability to consistently spot adverse drug reactions or provide actionable help, highlighting critical gaps in patient safety. On the developmental front, artificial intelligence was used to analyze nearly 6,000 early-life case histories, revealing how prenatal risks—like maternal smoking or lack of breastfeeding—predict behavioral issues, with gender-specific effects.
Other notable advances include self-powered artificial synapses that bring near-human vision to artificial intelligence hardware by mimicking biological systems and generating their own electricity. Emotional bonds between humans and artificial intelligence are being rigorously studied as well, with new assessment scales exploring the nuances of emotional attachment—some users become dependent, while others keep digital assistants at arm’s length. Finally, studies show that some large language models exhibit signs of cognitive dissonance similar to humans and may outperform average people in standard tests of emotional intelligence, prompting ongoing debate about artificial intelligence’s place along the continuum of cognition and empathy. Collectively, these developments signal deep learning’s surge into domains long held as uniquely human.