Home Artificial Intelligence 2023-24 Takeda Fellows: Advancing analysis on the intersection of AI and well being | MIT Information

2023-24 Takeda Fellows: Advancing analysis on the intersection of AI and well being | MIT Information

2023-24 Takeda Fellows: Advancing analysis on the intersection of AI and well being | MIT Information


The College of Engineering has chosen 13 new Takeda Fellows for the 2023-24 tutorial yr. With assist from Takeda, the graduate college students will conduct pathbreaking analysis starting from distant well being monitoring for digital medical trials to ingestible gadgets for at-home, long-term diagnostics.

Now in its fourth yr, the MIT-Takeda Program, a collaboration between MIT’s College of Engineering and Takeda, fuels the event and utility of synthetic intelligence capabilities to profit human well being and drug improvement. A part of the Abdul Latif Jameel Clinic for Machine Studying in Well being, this system coalesces disparate disciplines, merges idea and sensible implementation, combines algorithm and {hardware} improvements, and creates multidimensional collaborations between academia and business.

The 2023-24 Takeda Fellows are:

Adam Gierlach

Adam Gierlach is a PhD candidate within the Division of Electrical Engineering and Pc Science. Gierlach’s work combines progressive biotechnology with machine studying to create ingestible gadgets for superior diagnostics and supply of therapeutics. In his earlier work, Gierlach developed a non-invasive, ingestible gadget for long-term gastric recordings in free-moving sufferers. With the assist of a Takeda Fellowship, he’ll construct on this pathbreaking work by growing good, energy-efficient, ingestible gadgets powered by application-specific built-in circuits for at-home, long-term diagnostics. These revolutionary gadgets — able to figuring out, characterizing, and even correcting gastrointestinal illnesses — symbolize the forefront of biotechnology. Gierlach’s progressive contributions will assist to advance elementary analysis on the enteric nervous system and assist develop a greater understanding of gut-brain axis dysfunctions in Parkinson’s illness, autism spectrum dysfunction, and different prevalent problems and circumstances.

Vivek Gopalakrishnan

Vivek Gopalakrishnan is a PhD candidate within the Harvard-MIT Program in Well being Sciences and Know-how. Gopalakrishnan’s aim is to develop biomedical machine-learning strategies to enhance the research and therapy of human illness. Particularly, he employs computational modeling to advance new approaches for minimally invasive, image-guided neurosurgery, providing a protected various to open mind and spinal procedures. With the assist of a Takeda Fellowship, Gopalakrishnan will develop real-time pc imaginative and prescient algorithms that ship high-quality, 3D intraoperative picture steerage by extracting and fusing data from multimodal neuroimaging information. These algorithms may permit surgeons to reconstruct 3D neurovasculature from X-ray angiography, thereby enhancing the precision of gadget deployment and enabling extra correct localization of wholesome versus pathologic anatomy.

Hao He

Hao He’s a PhD candidate within the Division of Electrical Engineering and Pc Science. His analysis pursuits lie on the intersection of generative AI, machine studying, and their purposes in drugs and human well being, with a selected emphasis on passive, steady, distant well being monitoring to assist digital medical trials and health-care administration. Extra particularly, He goals to develop reliable AI fashions that promote equitable entry and ship honest efficiency impartial of race, gender, and age. In his previous work, He has developed monitoring techniques utilized in medical research of Parkinson’s illness, Alzheimer’s illness, and epilepsy. Supported by a Takeda Fellowship, He’ll develop a novel know-how for the passive monitoring of sleep levels (utilizing radio signaling) that seeks to deal with current gaps in efficiency throughout totally different demographic teams. His challenge will deal with the issue of imbalance in obtainable datasets and account for intrinsic variations throughout subpopulations, utilizing generative AI and multi-modality/multi-domain studying, with the aim of studying sturdy options which are invariant to totally different subpopulations. He’s work holds nice promise for delivering superior, equitable health-care providers to all folks and will considerably impression well being care and AI.

Chengyi Lengthy

Chengyi Lengthy is a PhD candidate within the Division of Civil and Environmental Engineering. Lengthy’s interdisciplinary analysis integrates the methodology of physics, arithmetic, and pc science to analyze questions in ecology. Particularly, Lengthy is growing a collection of probably groundbreaking methods to clarify and predict the temporal dynamics of ecological techniques, together with human microbiota, that are important topics in well being and medical analysis. His present work, supported by a Takeda Fellowship, is targeted on growing a conceptual, mathematical, and sensible framework to grasp the interaction between exterior perturbations and inside neighborhood dynamics in microbial techniques, which can function a key step towards discovering bio options to well being administration. A broader perspective of his analysis is to develop AI-assisted platforms to anticipate the altering conduct of microbial techniques, which can assist to distinguish between wholesome and unhealthy hosts and design probiotics for the prevention and mitigation of pathogen infections. By creating novel strategies to deal with these points, Lengthy’s analysis has the potential to supply highly effective contributions to drugs and international well being.

Omar Mohd

Omar Mohd is a PhD candidate within the Division of Electrical Engineering and Pc Science. Mohd’s analysis is targeted on growing new applied sciences for the spatial profiling of microRNAs, with probably necessary purposes in most cancers analysis. By way of progressive mixtures of micro-technologies and AI-enabled picture evaluation to measure the spatial variations of microRNAs inside tissue samples, Mohd hopes to achieve new insights into drug resistance in most cancers. This work, supported by a Takeda Fellowship, falls throughout the rising subject of spatial transcriptomics, which seeks to grasp most cancers and different illnesses by analyzing the relative places of cells and their contents inside tissues. The final word aim of Mohd’s present challenge is to seek out multidimensional patterns in tissues which will have prognostic worth for most cancers sufferers. One precious element of his work is an open-source AI program developed with collaborators at Beth Israel Deaconess Medical Middle and Harvard Medical College to auto-detect most cancers epithelial cells from different cell sorts in a tissue pattern and to correlate their abundance with the spatial variations of microRNAs. By way of his analysis, Mohd is making progressive contributions on the interface of microsystem know-how, AI-based picture evaluation, and most cancers therapy, which may considerably impression drugs and human well being.

Sanghyun Park

Sanghyun Park is a PhD candidate within the Division of Mechanical Engineering. Park specializes within the integration of AI and biomedical engineering to deal with advanced challenges in human well being. Drawing on his experience in polymer physics, drug supply, and rheology, his analysis focuses on the pioneering subject of in-situ forming implants (ISFIs) for drug supply. Supported by a Takeda Fellowship, Park is at present growing an injectable formulation designed for long-term drug supply. The first aim of his analysis is to unravel the compaction mechanism of drug particles in ISFI formulations via complete modeling and in-vitro characterization research using superior AI instruments. He goals to achieve an intensive understanding of this distinctive compaction mechanism and apply it to drug microcrystals to realize properties optimum for long-term drug supply. Past these elementary research, Park’s analysis additionally focuses on translating this data into sensible purposes in a medical setting via animal research particularly geared toward extending drug launch length and enhancing mechanical properties. The progressive use of AI in growing superior drug supply techniques, coupled with Park’s precious insights into the compaction mechanism, may contribute to enhancing long-term drug supply. This work has the potential to pave the best way for efficient administration of persistent illnesses, benefiting sufferers, clinicians, and the pharmaceutical business.

Huaiyao Peng

Huaiyao Peng is a PhD candidate within the Division of Organic Engineering. Peng’s analysis pursuits are targeted on engineered tissue, microfabrication platforms, most cancers metastasis, and the tumor microenvironment. Particularly, she is advancing novel AI methods for the event of pre-cancer organoid fashions of high-grade serous ovarian most cancers (HGSOC), an particularly deadly and difficult-to-treat most cancers, with the aim of gaining new insights into development and efficient remedies. Peng’s challenge, supported by a Takeda Fellowship, will likely be one of many first to make use of cells from serous tubal intraepithelial carcinoma lesions discovered within the fallopian tubes of many HGSOC sufferers. By analyzing the mobile and molecular modifications that happen in response to therapy with small molecule inhibitors, she hopes to establish potential biomarkers and promising therapeutic targets for HGSOC, together with customized therapy choices for HGSOC sufferers, in the end enhancing their medical outcomes. Peng’s work has the potential to result in necessary advances in most cancers therapy and spur progressive new purposes of AI in well being care. 

Priyanka Raghavan

Priyanka Raghavan is a PhD candidate within the Division of Chemical Engineering. Raghavan’s analysis pursuits lie on the frontier of predictive chemistry, integrating computational and experimental approaches to construct highly effective new predictive instruments for societally necessary purposes, together with drug discovery. Particularly, Raghavan is growing novel fashions to foretell small-molecule substrate reactivity and compatibility in regimes the place little information is obtainable (probably the most lifelike regimes). A Takeda Fellowship will allow Raghavan to push the boundaries of her analysis, making progressive use of low-data and multi-task machine studying approaches, artificial chemistry, and robotic laboratory automation, with the aim of making an autonomous, closed-loop system for the invention of high-yielding natural small molecules within the context of underexplored reactions. Raghavan’s work goals to establish new, versatile reactions to broaden a chemist’s artificial toolbox with novel scaffolds and substrates that might kind the idea of important medication. Her work has the potential for far-reaching impacts in early-stage, small-molecule discovery and will assist make the prolonged drug-discovery course of considerably quicker and cheaper.

Zhiye Track

Zhiye “Zoey” Track is a PhD candidate within the Division of Electrical Engineering and Pc Science. Track’s analysis integrates cutting-edge approaches in machine studying (ML) and {hardware} optimization to create next-generation, wearable medical gadgets. Particularly, Track is growing novel approaches for the energy-efficient implementation of ML computation in low-power medical gadgets, together with a wearable ultrasound “patch” that captures and processes photographs for real-time decision-making capabilities. Her latest work, carried out in collaboration with clinicians, has centered on bladder quantity monitoring; different potential purposes embrace blood strain monitoring, muscle prognosis, and neuromodulation. With the assist of a Takeda Fellowship, Track will construct on that promising work and pursue key enhancements to current wearable gadget applied sciences, together with growing low-compute and low-memory ML algorithms and low-power chips to allow ML on good wearable gadgets. The applied sciences rising from Track’s analysis may supply thrilling new capabilities in well being care, enabling highly effective and cost-effective point-of-care diagnostics and increasing particular person entry to autonomous and steady medical monitoring.

Peiqi Wang

Peiqi Wang is a PhD candidate within the Division of Electrical Engineering and Pc Science. Wang’s analysis goals to develop machine studying strategies for studying and interpretation from medical photographs and related medical information to assist medical decision-making. He’s growing a multimodal illustration studying strategy that aligns information captured in massive quantities of medical picture and textual content information to switch this data to new duties and purposes. Supported by a Takeda Fellowship, Wang will advance this promising line of labor to construct sturdy instruments that interpret photographs, be taught from sparse human suggestions, and cause like docs, with probably main advantages to necessary stakeholders in well being care.

Oscar Wu

Haoyang “Oscar” Wu is a PhD candidate within the Division of Chemical Engineering. Wu’s analysis integrates quantum chemistry and deep studying strategies to speed up the method of small-molecule screening within the improvement of recent medication. By figuring out and automating dependable strategies for locating transition state geometries and calculating barrier heights for brand new reactions, Wu’s work may make it potential to conduct the high-throughput ab initio calculations of response charges wanted to display the reactivity of huge numbers of lively pharmaceutical substances (APIs). A Takeda Fellowship will assist his present challenge to: (1) develop open-source software program for high-throughput quantum chemistry calculations, specializing in the reactivity of drug-like molecules, and (2) develop deep studying fashions that may quantitatively predict the oxidative stability of APIs. The instruments and insights ensuing from Wu’s analysis may assist to remodel and speed up the drug-discovery course of, providing vital advantages to the pharmaceutical and medical fields and to sufferers.

Soojung Yang

Soojung Yang is a PhD candidate within the Division of Supplies Science and Engineering. Yang’s analysis applies cutting-edge strategies in geometric deep studying and generative modeling, together with atomistic simulations, to raised perceive and mannequin protein dynamics. Particularly, Yang is growing novel instruments in generative AI to discover protein conformational landscapes that provide better pace and element than physics-based simulations at a considerably decrease value. With the assist of a Takeda Fellowship, she is going to construct upon her profitable work on the reverse transformation of coarse-grained proteins to the all-atom decision, aiming to construct machine-learning fashions that bridge a number of measurement scales of protein conformation variety (all-atom, residue-level, and domain-level). Yang’s analysis holds the potential to offer a strong and broadly relevant new instrument for researchers who search to grasp the advanced protein features at work in human illnesses and to design medication to deal with and treatment these illnesses.

Yuzhe Yang

Yuzhe Yang is a PhD candidate within the Division of Electrical Engineering and Pc Science. Yang’s analysis pursuits lie on the intersection of machine studying and well being care. In his previous and present work, Yang has developed and utilized progressive machine-learning fashions that handle key challenges in illness prognosis and monitoring. His many notable achievements embrace the creation of one of many first machine learning-based options utilizing nocturnal respiration alerts to detect Parkinson’s illness (PD), estimate illness severity, and observe PD development. With the assist of a Takeda Fellowship, Yang will broaden this promising work to develop an AI-based prognosis mannequin for Alzheimer’s illness (AD) utilizing sleep-breathing information that’s considerably extra dependable, versatile, and economical than present diagnostic instruments. This passive, in-home, contactless monitoring system — resembling a easy residence Wi-Fi router — may also allow distant illness evaluation and steady development monitoring. Yang’s groundbreaking work has the potential to advance the prognosis and therapy of prevalent illnesses like PD and AD, and it affords thrilling prospects for addressing many well being challenges with dependable, reasonably priced machine-learning instruments. 



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