Johnson William C, Alivisatos Ares, Smith Trever C, Van Nhi, Soni Vijay, Wallach Joshua B, Clark Nicholas A, Fitzgerald Timothy A, Whiteley Joshua J, Tan Shumin, Sokolov Artem, Ando D Michael, Schnappinger Dirk, Rhee Kyu Y, Aldridge Bree B
Department of Molecular Biology and Microbiology, Tufts University School of Medicine, Boston, MA 02111, USA; Tufts University School of Graduate Biomedical Sciences, Boston, MA 02111, USA.
Department of Molecular Biology and Microbiology, Tufts University School of Medicine, Boston, MA 02111, USA.
Cell Syst. 2025 Aug 20;16(8):101348. doi: 10.1016/j.cels.2025.101348. Epub 2025 Jul 29.
Treatments for tuberculosis remain lengthy, motivating a search for new drugs with novel mechanisms of action. However, it remains challenging to determine the direct targets of a drug and which disrupted cellular processes lead to bacterial killing. We developed a computational tool, DECIPHAER (decoding cross-modal information of pharmacologies via autoencoders), to select the important correlated transcriptional and morphological responses of Mycobacterium tuberculosis to treatment. By finding a reduced feature space, DECIPHAER highlighted essential features of cellular damage. DECIPHAER provides cell-death-relevant insight into uni-modal datasets, enabling interrogation of drug treatment responses for which transcriptional data are unavailable. Using morphological data alone with DECIPHAER, we discovered that respiration inhibition by the polypharmacological drugs SQ109 and BM212 can influence cell death more than their effects on the cell wall. This study demonstrates that DECIPHAER can extract the critical shared information from multi-modal measurements to identify cell-death-relevant mechanisms of TB drugs. A record of this paper's transparent peer review process is included in the supplemental information.
结核病的治疗疗程仍然很长,这促使人们寻找具有新作用机制的新药。然而,确定药物的直接靶点以及哪些细胞过程的破坏会导致细菌死亡仍然具有挑战性。我们开发了一种计算工具DECIPHAER(通过自动编码器解码药理学的跨模态信息),以选择结核分枝杆菌对治疗的重要相关转录和形态学反应。通过找到一个降维特征空间,DECIPHAER突出了细胞损伤的基本特征。DECIPHAER为单模态数据集提供了与细胞死亡相关的见解,能够对缺乏转录数据的药物治疗反应进行研究。仅使用形态学数据和DECIPHAER,我们发现多药联合药物SQ109和BM212对呼吸的抑制作用对细胞死亡的影响可能比对细胞壁的影响更大。这项研究表明,DECIPHAER可以从多模态测量中提取关键的共享信息,以识别结核病药物与细胞死亡相关的机制。本文透明的同行评审过程记录包含在补充信息中。