Choi Yoonjung, Lee Heejin, Beck Bo Ram, Lee Bora, Lee Ji Hyun, Kim Seoree, Chun Sang Hoon, Won Hye Sung, Ko Yoon Ho
Deargen Inc., Daejeon 35220, Republic of Korea.
Department of Internal Medicine, College of Medicine, The Catholic University of Korea, Seoul 06591, Republic of Korea.
Exp Ther Med. 2025 Apr 4;29(6):110. doi: 10.3892/etm.2025.12860. eCollection 2025 Jun.
TAM (TYRO3, AXL, MERTK) receptor tyrosine kinases (RTKs) have intrinsic roles in tumor cell proliferation, migration, chemoresistance, and suppression of antitumor immunity. The overexpression of TAM RTKs is associated with poor prognosis in various types of cancer. Single-target agents of TAM RTKs have limited efficacy because of an adaptive feedback mechanism resulting from the cooperation of TAM family members. This suggests that multiple targeting of members has the potential for a more potent anticancer effect. The present study used a deep-learning based drug-target interaction (DTI) prediction model called molecule transformer-DTI (MT-DTI) to identify commercially available drugs that may inhibit the three members of TAM RTKs. The results showed that fostamatinib, a spleen tyrosine kinase (Syk) inhibitor, could inhibit the three receptor kinases of the TAM family with an IC <1 µM. Notably, no other Syk inhibitors were predicted by the MT-DTI model. To verify this result, this study performed studies with various types of cancer cell lines. Consistent with the DTI results, this study observed that fostamatinib suppressed cell proliferation by inhibiting TAM RTKs, while other Syk inhibitors showed no inhibitory activity. These results suggest that fostamatinib could exhibit anticancer activity as a pan-TAM inhibitor. Taken together, these findings demonstrated that this artificial intelligence model could be effectively used for drug repurposing and repositioning. Furthermore, by identifying its novel mechanism of action, this study confirmed the potential for fostamatinib to expand its indications as a TAM inhibitor.
TAM(TYRO3、AXL、MERTK)受体酪氨酸激酶(RTK)在肿瘤细胞增殖、迁移、化疗耐药及抗肿瘤免疫抑制中具有内在作用。TAM RTK的过表达与多种癌症的不良预后相关。由于TAM家族成员协同作用产生的适应性反馈机制,TAM RTK的单靶点药物疗效有限。这表明对成员进行多靶点作用具有更强抗癌效果的潜力。本研究使用一种名为分子变压器-药物-靶点相互作用(MT-DTI)的基于深度学习的药物-靶点相互作用预测模型,来识别可能抑制TAM RTK三个成员的市售药物。结果显示,脾酪氨酸激酶(Syk)抑制剂福他替尼可抑制TAM家族的三种受体激酶,IC<1µM。值得注意的是,MT-DTI模型未预测到其他Syk抑制剂。为验证这一结果,本研究对多种癌细胞系进行了研究。与药物-靶点相互作用结果一致,本研究观察到福他替尼通过抑制TAM RTK来抑制细胞增殖,而其他Syk抑制剂未显示出抑制活性。这些结果表明福他替尼作为一种泛TAM抑制剂可能具有抗癌活性。综上所述,这些发现表明该人工智能模型可有效用于药物再利用和重新定位。此外,通过确定其新的作用机制,本研究证实了福他替尼作为TAM抑制剂扩大其适应症的潜力。