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Insilico Medicine Announces Nature Medicine Publication of Phase IIa Results Evaluating Rentosertib, the Novel TNIK Inhibitor for Idiopathic Pulmonary Fibrosis (IPF) Discovered and Designed with a Pioneering AI Approach

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Insilico Medicine Announces Nature Medicine Publication of Phase IIa Results Evaluating Rentosertib, the Novel TNIK Inhibitor for Idiopathic Pulmonary Fibrosis (IPF) Discovered and Designed with a Pioneering AI Approach
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Insilico Medicine Announces Nature Medicine Publication of Phase IIa Results Evaluating Rentosertib, the Novel TNIK Inhibitor for Idiopathic Pulmonary Fibrosis (IPF) Discovered and Designed with a Pioneering AI Approach

2025-06-03 22:27 Last Updated At:22:45

  • Phase IIa study results of Rentosertib were published simultaneously in Nature Medicine(IF = 58.7) and presented at the American Thoracic Society (ATS) 2025.
  • Encouraging clinical data showed that patients receiving 60 mg QD Rentosertib experienced the greatest mean improvement in lung function, as measured by forced vital capacity (FVC), with a mean change of +98.4 mL, compared to a mean decline of -20.3 mL in the placebo group.
  • Exploratory biomarkers analyses further validated the biological mechanism of TNIK, the novel target identified through a generative AI approach, supporting Rentosertib's potential anti-fibrotic and anti-inflammatory effects.
  • CAMBRIDGE, Mass., June 3, 2025 /PRNewswire/ -- Artificial intelligence (AI) is rapidly transforming the pharmaceutical industry, reshaping the landscape from target identification to personalized medicine, and unlocking unprecedented opportunities to accelerate drug discovery and delivery. Despite growing adoption, only a few AI-discovered or AI-designed drug candidates have advanced to clinical trials, and even fewer have demonstrated clinical proof-of-concept.

    On June 3, 2025, the industry's first proof-of-concept clinical validation of AI-driven drug discovery was published in Nature Medicine. Insilico Medicine and collaborators reported promising safety and efficacy results from a Phase IIa trial of Rentosertib (known as ISM001-055), a TNIK inhibitor developed using Insilico's generative AI platform, Pharma.AI, for idiopathic pulmonary fibrosis (IPF). Additionally, the exploratory analysis of biomarkers in this paper further validated the biological mechanism of TNIK inhibition, the novel target identified through a generative AI approach, supporting Rentosertib's potential anti-fibrotic and anti-inflammatory effects.

    "These results not only suggest that Rentosertib has a manageable safety and tolerability profile, but also warrants further investigation in larger-scale clinical trials of longer duration, demonstrating the transformative potential of AI in drug discovery and development and paving the way for faster and more innovative therapeutic advancements," Said Alex Zhavoronkov, PhD, Founder and CEO of Insilico Medicine.

    "We are thrilled that our research findings have been published in Nature Medicine. Rentosertib represents a truly innovative therapeutic, with both its target identification and molecular design powered by AI—an approach that is pioneering in the pharmaceutical industry. IPF remains a highly challenging disease with significant unmet clinical needs. This study demonstrates that Rentosertib has the potential to provide meaningful clinical benefits for IPF patients, which is truly exciting. However, the sample size in each patient group was relatively limited, and these findings will need to be validated in larger cohort studies." said Dr. Zuojun Xu, Professor at the Peking Union Medical College and the lead investigator of the Phase IIa clinical trial of Rentosertib in IPF patients.

    The Phase IIa GENESIS-IPF trial (Generative AI Enabled Novel Experimental Study of ISM001-055 in Subjects with Idiopathic Pulmonary Fibrosis) reported in this paper is a double-blind, placebo-controlled trial that enrolled 71 patients with IPF across 22 sites in China. Participants were randomly assigned to receive either placebo, 30 mg Rentosertib once daily (QD), 30 mg twice daily (BID), or 60 mg QD for 12 weeks.

    The results demonstrated that Rentosertib exhibited a manageable safety and tolerability profile, with similar rates of treatment-emergent adverse events (TEAEs) observed across all treatment groups, thereby meeting the primary endpoint. Most adverse events (AEs) were mild to moderate in severity, and serious adverse events (SAEs) were rare. Notably, all adverse events resolved following discontinuation of treatment.

    Promising outcomes were also observed for the secondary efficacy endpoint, with a dose-dependent improvement in forced vital capacity (FVC), the gold-standard metric assessing lung function in IPF patients. Patients receiving 60 mg QD Rentosertib showed the greatest mean improvement in lung function, with a mean FVC increase of +98.4 mL, compared to a mean decline of -20.3 mL in the placebo group.

    In addition, as an exploratory study, patient serum samples were collected throughout the trial and analyzed for protein profiles to investigate both the mechanism of action and the potential prognostic or predictive biomarkers of response to Rentosertib treatment.

    The results revealed dose- and time-dependent changes in serum protein levels and FVC after 12 weeks of treatment, further supporting Rentosertib's anti-fibrotic and anti-inflammatory effects. In the high-dose group, profibrotic proteins such as COL1A1, MMP10, and FAP were significantly reduced, while the anti-inflammatory marker IL-10 was increased. Notably, these protein changes correlated with improvements in FVC. Collectively, these findings are consistent with preclinical observations and provide valuable guidance for dose selection and biomarker identification in future clinical validations.

    The data from this study were presented in oral presentations and a poster presentation at the American Thoracic Society (ATS) 2025 International Conference. In light of these encouraging study results, Insilico has begun discussions with regulatory authorities to facilitate the prospective evaluation of Rentosertib in larger cohorts of patients.

    By integrating advanced AI and automation technologies, Insilico Medicine has demonstrated significant efficiency improvements in practical applications, setting a benchmark for AI-driven drug research and development. Compared to the typical 2.5–4 years required in traditional drug discovery, Insilico's 22 nominated candidate drugs from 2021 to 2024 took only 12–18 months on average to progress from project initiation to nomination of preclinical candidates (PCCs), with each project requiring synthesis and testing of only about 60–200 molecules. The success rate from PCC to IND-enabling stage reached 100%.

    About Rentosertib (Known as ISM001-055)

    Rentosertib is a potentially first-in-class small molecule targeting TNIK developed utilizing generative AI. In IPF, the activation of TNIK drives pathological fibrosis in the lungs, contributing to the progressive decline in lung function. By inhibiting TNIK, Rentosertib aims to halt or reverse fibrotic processes, offering a disease-modifying treatment for patients with IPF. The history of discovery, design and development including target discovery, generative chemistry, multiple in-vitro and in-vivo experiments as well as the results of Phase I clinical studies in human volunteers were published in a Nature Biotechnology article in March 2024.

    About Idiopathic Pulmonary Fibrosis (IPF)

    Idiopathic Pulmonary Fibrosis (IPF) is a chronic, scarring lung disease characterized by a progressive and irreversible decline in lung function. Affecting approximately 5 million people worldwide, IPF carries a poor prognosis, with a median survival of 3 to 4 years. Current approved treatments, including antifibrotic drugs, can slow disease progression but do not stop or reverse it, leaving a significant unmet need for more effective, disease-modifying therapies.

    About Insilico Medicine

    Insilico Medicine, a global clinical stage biotechnology company powered by generative AI, is connecting biology, chemistry, medicine and science research using next-generation AI systems. The company has developed AI platforms that utilize deep generative models, reinforcement learning, transformers, and other modern machine learning techniques for novel target discovery and the generation of novel molecular structures with desired properties. Insilico Medicine is developing breakthrough solutions to discover and develop innovative drugs for cancer, fibrosis, central nervous system diseases, infectious diseases, autoimmune diseases, and aging-related diseases. www.insilico.com

CAMBRIDGE, Mass., June 3, 2025 /PRNewswire/ -- Artificial intelligence (AI) is rapidly transforming the pharmaceutical industry, reshaping the landscape from target identification to personalized medicine, and unlocking unprecedented opportunities to accelerate drug discovery and delivery. Despite growing adoption, only a few AI-discovered or AI-designed drug candidates have advanced to clinical trials, and even fewer have demonstrated clinical proof-of-concept.

On June 3, 2025, the industry's first proof-of-concept clinical validation of AI-driven drug discovery was published in Nature Medicine. Insilico Medicine and collaborators reported promising safety and efficacy results from a Phase IIa trial of Rentosertib (known as ISM001-055), a TNIK inhibitor developed using Insilico's generative AI platform, Pharma.AI, for idiopathic pulmonary fibrosis (IPF). Additionally, the exploratory analysis of biomarkers in this paper further validated the biological mechanism of TNIK inhibition, the novel target identified through a generative AI approach, supporting Rentosertib's potential anti-fibrotic and anti-inflammatory effects.

"These results not only suggest that Rentosertib has a manageable safety and tolerability profile, but also warrants further investigation in larger-scale clinical trials of longer duration, demonstrating the transformative potential of AI in drug discovery and development and paving the way for faster and more innovative therapeutic advancements," Said Alex Zhavoronkov, PhD, Founder and CEO of Insilico Medicine.

"We are thrilled that our research findings have been published in Nature Medicine. Rentosertib represents a truly innovative therapeutic, with both its target identification and molecular design powered by AI—an approach that is pioneering in the pharmaceutical industry. IPF remains a highly challenging disease with significant unmet clinical needs. This study demonstrates that Rentosertib has the potential to provide meaningful clinical benefits for IPF patients, which is truly exciting. However, the sample size in each patient group was relatively limited, and these findings will need to be validated in larger cohort studies." said Dr. Zuojun Xu, Professor at the Peking Union Medical College and the lead investigator of the Phase IIa clinical trial of Rentosertib in IPF patients.

The Phase IIa GENESIS-IPF trial (Generative AI Enabled Novel Experimental Study of ISM001-055 in Subjects with Idiopathic Pulmonary Fibrosis) reported in this paper is a double-blind, placebo-controlled trial that enrolled 71 patients with IPF across 22 sites in China. Participants were randomly assigned to receive either placebo, 30 mg Rentosertib once daily (QD), 30 mg twice daily (BID), or 60 mg QD for 12 weeks.

The results demonstrated that Rentosertib exhibited a manageable safety and tolerability profile, with similar rates of treatment-emergent adverse events (TEAEs) observed across all treatment groups, thereby meeting the primary endpoint. Most adverse events (AEs) were mild to moderate in severity, and serious adverse events (SAEs) were rare. Notably, all adverse events resolved following discontinuation of treatment.

Promising outcomes were also observed for the secondary efficacy endpoint, with a dose-dependent improvement in forced vital capacity (FVC), the gold-standard metric assessing lung function in IPF patients. Patients receiving 60 mg QD Rentosertib showed the greatest mean improvement in lung function, with a mean FVC increase of +98.4 mL, compared to a mean decline of -20.3 mL in the placebo group.

In addition, as an exploratory study, patient serum samples were collected throughout the trial and analyzed for protein profiles to investigate both the mechanism of action and the potential prognostic or predictive biomarkers of response to Rentosertib treatment.

The results revealed dose- and time-dependent changes in serum protein levels and FVC after 12 weeks of treatment, further supporting Rentosertib's anti-fibrotic and anti-inflammatory effects. In the high-dose group, profibrotic proteins such as COL1A1, MMP10, and FAP were significantly reduced, while the anti-inflammatory marker IL-10 was increased. Notably, these protein changes correlated with improvements in FVC. Collectively, these findings are consistent with preclinical observations and provide valuable guidance for dose selection and biomarker identification in future clinical validations.

The data from this study were presented in oral presentations and a poster presentation at the American Thoracic Society (ATS) 2025 International Conference. In light of these encouraging study results, Insilico has begun discussions with regulatory authorities to facilitate the prospective evaluation of Rentosertib in larger cohorts of patients.

By integrating advanced AI and automation technologies, Insilico Medicine has demonstrated significant efficiency improvements in practical applications, setting a benchmark for AI-driven drug research and development. Compared to the typical 2.5–4 years required in traditional drug discovery, Insilico's 22 nominated candidate drugs from 2021 to 2024 took only 12–18 months on average to progress from project initiation to nomination of preclinical candidates (PCCs), with each project requiring synthesis and testing of only about 60–200 molecules. The success rate from PCC to IND-enabling stage reached 100%.

About Rentosertib (Known as ISM001-055)

Rentosertib is a potentially first-in-class small molecule targeting TNIK developed utilizing generative AI. In IPF, the activation of TNIK drives pathological fibrosis in the lungs, contributing to the progressive decline in lung function. By inhibiting TNIK, Rentosertib aims to halt or reverse fibrotic processes, offering a disease-modifying treatment for patients with IPF. The history of discovery, design and development including target discovery, generative chemistry, multiple in-vitro and in-vivo experiments as well as the results of Phase I clinical studies in human volunteers were published in a Nature Biotechnology article in March 2024.

About Idiopathic Pulmonary Fibrosis (IPF)

Idiopathic Pulmonary Fibrosis (IPF) is a chronic, scarring lung disease characterized by a progressive and irreversible decline in lung function. Affecting approximately 5 million people worldwide, IPF carries a poor prognosis, with a median survival of 3 to 4 years. Current approved treatments, including antifibrotic drugs, can slow disease progression but do not stop or reverse it, leaving a significant unmet need for more effective, disease-modifying therapies.

About Insilico Medicine

Insilico Medicine, a global clinical stage biotechnology company powered by generative AI, is connecting biology, chemistry, medicine and science research using next-generation AI systems. The company has developed AI platforms that utilize deep generative models, reinforcement learning, transformers, and other modern machine learning techniques for novel target discovery and the generation of novel molecular structures with desired properties. Insilico Medicine is developing breakthrough solutions to discover and develop innovative drugs for cancer, fibrosis, central nervous system diseases, infectious diseases, autoimmune diseases, and aging-related diseases. www.insilico.com

** The press release content is from PR Newswire. Bastille Post is not involved in its creation. **

Insilico Medicine Announces Nature Medicine Publication of Phase IIa Results Evaluating Rentosertib, the Novel TNIK Inhibitor for Idiopathic Pulmonary Fibrosis (IPF) Discovered and Designed with a Pioneering AI Approach

Insilico Medicine Announces Nature Medicine Publication of Phase IIa Results Evaluating Rentosertib, the Novel TNIK Inhibitor for Idiopathic Pulmonary Fibrosis (IPF) Discovered and Designed with a Pioneering AI Approach

Insilico Medicine Announces Nature Medicine Publication of Phase IIa Results Evaluating Rentosertib, the Novel TNIK Inhibitor for Idiopathic Pulmonary Fibrosis (IPF) Discovered and Designed with a Pioneering AI Approach

Insilico Medicine Announces Nature Medicine Publication of Phase IIa Results Evaluating Rentosertib, the Novel TNIK Inhibitor for Idiopathic Pulmonary Fibrosis (IPF) Discovered and Designed with a Pioneering AI Approach

KUALA LUMPUR, Malaysia, Jan. 12, 2026 /PRNewswire/ -- Elitery Global Technology Sdn. Bhd., a subsidiary of PT Data Sinergitama Jaya Tbk, proudly announces that it has been awarded the prestigious Malaysia Digital (MD) Status by the Malaysia Digital Economy Corporation (MDEC). This recognition marks an important milestone in Elitery's regional growth journey and reaffirms the company's commitment to advancing the digital economy through innovation, technology excellence, and strategic collaboration. The MD Status, conferred by the Government of Malaysia, is awarded to companies that meet stringent criteria in driving approved digital activities and contributing to the nation's digital transformation agenda.

"Receiving the Malaysia Digital Status is a major milestone for Elitery Global Technology Sdn. Bhd.," said Kresna Adiprawira, Director of Elitery Global Technology Sdn. Bhd. "This recognition not only validates our current digital initiatives but also opens up greater opportunities to accelerate our growth, enhance our capabilities, and strengthen our contribution to Malaysia's digital ecosystem."

The MD Status provides Elitery access to key incentives and privileges under the Malaysia Digital Bill of Guarantees (BoGs). These benefits include the flexibility to hire both local and foreign talent, full freedom of ownership, and the ability to raise and borrow capital globally to support its expansion across the region. Furthermore, the company is allowed to invest in foreign currency assets both in Malaysia and abroad, enabling stronger business diversification and growth. Beyond financial advantages such as income tax exemptions and investment tax allowances, the MD Status connects Elitery to Malaysia's thriving digital ecosystem through business-matching initiatives, partnership opportunities, and grant facilitation.

This recognition will empower Elitery Global Technology Sdn. Bhd. to expand its digital product portfolio, invest further in local talent, and strengthen its presence across regional markets. As part of this commitment, the company will continue to uphold full compliance with all MD Status requirements, including the annual submission of the Self-Declaration Form (SDF), ensuring sustained alignment with Malaysia's digital economy standards.

About Elitery

Elitery (IDX: ELIT) is a premier IT Managed Services provider specializing in cloud and cybersecurity. A strategic Google Cloud partner and two-time Public Sector Partner of the Year (2023-2024), ELIT leverages 14+ years of expertise to drive secure digital transformation across Asia-Pacific.

** The press release content is from PR Newswire. Bastille Post is not involved in its creation. **

A New Era of Digital Innovation: Elitery Global Technology Sdn. Bhd. Granted Malaysia Digital (MD) Status

A New Era of Digital Innovation: Elitery Global Technology Sdn. Bhd. Granted Malaysia Digital (MD) Status

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